ASSESSMENT OF WIND ENERGY POTENTIAL MAPPING FOR
PENINSULAR MALAYSIA
MOHAMMAD RAFIQUL ISLAM
DISSERTATION SUBMITTED IN FULFILLMENT
OF THE REQUIREMENT FOR THE DEGREE OF
MASTER OF ENGINEERING SCIENCE
FACULTY OF ENGINEERING
UNIVERSITY OF MALAYA
KUALA LUMPUR
2011
ii
ORIGINAL LITERARY WORK DECLARATION
Name of the candidate: Mohammad Rafiqul Islam (I.C/Passport No.
Registration/Matric No: KGA090033
Name of the Degree: Master of Engineering Science (M.Eng.Sc)
Title of Project Paper/ Research Report/ Dissertation / Thesis (“this work”):
Assessment of Wind Energy Potential Mapping for Peninsular Malaysia
Field of Study: Energy
I do solemnly and sincerely declare that:
(1) I am the sole author /writer of this work;
(2) This work is original;
(3) Any use of any work in which copyright exists was done by way of fair dealings
and any expert or extract from, or reference to or reproduction of any copyright
work has been disclosed expressly and sufficiently and the title of the Work and
its authorship has been acknowledged in this Work;
(4) I do not have any actual knowledge nor do I ought reasonably to know that the
making of this work constitutes an infringement of any copyright work;
(5) I, hereby assign all and every rights in the copyrights to this Work to the
University of Malaya ( UM), who henceforth shall be owner of the copyright in
this Work and that any reproduction or use in any form or by any means
whatsoever is prohibited without the written consent of UM having been first
had and obtained actual knowledge;
(6) I am fully aware that if in the course of making this Work I have infringed any
copyright whether internationally or otherwise, I may be subject to legal action
or any other action as may be determined by UM.
Candidate‟s Signature Date:
Subscribed and solemnly declared before,
Witness Signature Date:
Name:
Designation:
iii
ABSTRACT
Wind energy generation is growing rapidly worldwide and will continue to do so for the
foreseeable future. In this study, the most accepted 2-parameter Weibull distribution
model has been applied for assessment of wind energy potentiality. The wind directions
have been also identified using the WRPLOT View software. The Geographical
Information System (GIS), ArcGIS 9.3 software, has been applied to present the
predicted monthly and yearly mean wind speed in the form of contour maps. The wind
speed data of 15 stations has been collected from the Malaysian Meteorological
Department over the period of 2008-2009.
Based on the experimental data, it is found that the numerical values of both Weibull
parameters (k and c) for Peninsular Malaysia vary over a wide range. It is found that the
daytime, from 8 am to 6 pm, is windy for all the years, while the night time is relatively
calm. Most of the monthly mean wind speed values are between 1.5 m/s to 4.5 m/s, but
some are over 4.5 m/s and few are under 1.5 m/s. The mean wind speeds for all the
years are lower than 4.5 m/s and the range of the yearly mean wind speed values is from
0.90 to 4.06 m/s. It is found that the yearly mean wind speed at Mersing is 4.06 m/s in
2008 and 4.01 m/s in 2009, which is capable of producing commercial wind energy by
using current technology.
The monthly highest value of wind power density was found to be 227.1 W/m2 at
Mersing in January, 2009 and the lowest value of wind power density was 1.3 W/m2 in
November 2008 at Batu Embun. The average value of the monthly wind power density
was estimated 26.76 W/m2. The range of the values of monthly wind energy density
was found to be between 11.23 to 1962 kWh/m2/year whereas the average wind energy
density was found to be 231.20 kWh/m2/year.
iv
Mersing is the most „windy‟ place with the largest scale parameter c, and its most
frequent wind speed is 3.5 m/s. The maximum percentage of error between Weibull and
observed wind speed frequencies occur at 3 m/s or more than 3 m/s is around 20%.
From cumulative distribution function, it is found that Mersing will have the highest
operating possibility of 67% (around 5789 hours per year). For all the sites, the
prevailing winds from the most probable wind directions on the percentage ranging
from 15 to 41% and the wind speeds less than 3 m/s are ranging from 11.2-89.2%.
The geographical parameters (latitude, longitude, and altitude), and months of the year
were used as input data, while the monthly and yearly mean wind speeds were found as
the output. It is seen that the southern part of Peninsular Malaysia is windier than that of
the other parts in Peninsular Malaysia. The predicted wind speed values are given in the
form of monthly and yearly maps, which can be easily used for assessment of wind
energy potential for different locations within Peninsular Malaysia.
v
ABSTRAK
Penjanaan tenaga angin kiri berkembang pesat di seluruh dunia dan akan terus
bekkembang di masa akan datang. Dalam kajian ini, model pengedaran 2-parameter
Weibull telah dilaksanakan untuk penilaian potensi tenaga angin. Arah angin telah juga
dikenalpasti menggunakan perisian WRPLOT view. Perisian sistem Maklumat Geografi
(SIG), ArcGIS 9.3, telah diaplikasikan untuk menunjukkan ramalan parata kelajuan
angin bulanan dan tahunan dalam bentuk peta kontur. Data kelajuan angin dari 15 stesen
telah dikumpulkan daripada Jabatan Meteorologi Malaysia (MMD) selama tempoh
2008-2009.
Berdasarkan data eksperimen, didapati bahawa nilai berangka kedua parameter Weibull
(k dan c) untuk Semenanjung Malaysia adalah berbeza-beza dalam julat yang besar. Hal
ini ditemui bahawa pada siang hari, 08:00-6:00, keadaan berangin untuk semua
pusingan tahun, sedangkan pada malam hari keadaan secaravelatif tenang. Sebahagian
besar nilai parata kelajuan angin bulanan adalah antara 1.5 m/s hingga 4.5 m/s, namun
ada juga yang lebih dari 4.5 m/s dan beberapa berada di bawah 1.5 m/s. Purata kelajuan
angin untuk semua tahun lebih rendah daripada 4.5 m/s dan julat nilai purata kelajuan
angin tahunan adalah 0.90-4.06 m/s. Didapati bahawa purata kelajuan angin tahunan di
Mersing adalah 4.06 m/s pada tahun 2008 dan 4.01 m/s pada tahun 2009, yang mampu
menghasilkan tenaga angin komersial dengan menggunakan teknologi masa kini.
Nilai tertinggi bulanan ketumpatan tenaga angin adalah 227.1 W/m2 di Mersing pada
bulan Januari tahun 2009 dan nilai terendah ketumpatan tenaga angin adalah 1.3 W/m2
pada bulan November tahun 2008 di Batu Embun. Nilai purata ketumpatan tenaga angin
bulanan dianggarkan 26.76 W/m2. Julat nilai ketumpatan tenaga angin bulanan ditemui
antara 11.23-1962 kWh/m2/tahun dan ketumpatan purata tenaga angin adalah 231.20
kWh/m2/tahun.
vi
Mersing merupakan tempat yang paling 'berangin' dengan skala terbesar parameter c,
dan kelajuan angin paling sering adalah 3.5 m/s. Peratusan maksimum ralat antara
frekuensi Weibull dan frekuensi kelajuan angin yang diamati terjadi pada 3.0 m/s atau
lebih dari 3.0 m/s adalah sekitar 20%. Dari fungsi edaran kumulatif, kita mendapati
bahawa Mersing akan mempunyai kemungkinan operasi tertinggi 67% (sekitar 5789
jam setahun). Untuk semua kawasan kajian, angin yang berlaku dari arah angin yang
paling mungkin dengan peratusan antara 15 hingga 41% dan kelajuan angin kurang dari
3.0 m/s adalah berkisar 11.2-89.2%.
Parameter geografi (lintang, bujur, dan ketinggian), dan bulan dalam setahun yang
digunakan sebagai data input, sedangkan purata kelajuan angin bulanan dan tahunan
rata-rata digunakan sebagai output dari rangkaian. Didapati bahawa bahagian selatan
Semenanjung Malaysia adalah lebih berangin dibandingkan dengan bahagian lain. Nilai
purata kelajuan angin difunjukkan dalam bentuk peta bulanan dan tahunan, yang dapat
digunakan dengan mudah untuk penilaian potensi tenaga angin untuk pelbagai lokasi di
Semenanjung Malaysia.
vii
ACKNOWLEDGEMENT
At first I would like to express my gratitude to the almighty Allah, who has created and
knowledgeable me to finish the dissertation smoothly. I would like to bestow my
gratitude and profound respect to my supervisors Assoc. Prof. Dr. Saidur Rahman and
Prof. Dr. Nasrudin Bin Abd Rahim for their hearty support, encouragement and
incessant exploration throughout my study period.
I remember the esteem, affection and inspiration of my parents and elder brother Dr.
Md. Sofiqul Alam to complete the degree successfully. I am absolutely grateful and
indebted to my beloved wife Mts. Toslima Khatun. Without her forbearance and help, it
would be quite impossible for me to complete this dissertation work in time.
I would like to acknowledge gratefully the financial support by University Malaya
Research Grant (UMRG) and IPPP to carry out this research project. I am thankful to
the Malaysian Meteorological Department (MMD) to provide me wind speed and
direction data. I gratefully acknowledge the privileges and opportunities offered by the
University of Malaya. I also express my gratitude to the staff of this varsity that helped
directly or indirectly to carry out my research work.
viii
TABLE OF CONTENTS
ORIGINAL LITERARY WORK DECLARATION ................................................... ii
ABSTRACT .................................................................................................................... iii
ACKNOWLEDGEMENT ............................................................................................ vii
TABLE OF CONTENTS ............................................................................................. viii
LIST OF FIGURES ....................................................................................................... xi
NOMENCLATURE ..................................................................................................... xvi
CHAPTER 1: INTRODUCTION .................................................................................. 1
1.1 Background ............................................................................................................ 1
1.2 Wind energy basics ................................................................................................ 6
1.3 Advantages and disadvantages of wind energy ... Error! Bookmark not defined.
1.4 Objectives of the study .......................................................................................... 7
1.5 Scope of the study .................................................................................................. 8
1.6 Limitations of the study ......................................................................................... 9
1.7 Outline of the dissertation .................................................................................... 10
CHAPTER 2: LITERATURE REVIEW .................................................................... 12
2.1 Introduction .......................................................................................................... 12
2.2 Review on assessment of wind energy potentiality ............................................. 14
2.3 Review on contour mapping for wind energy ..................................................... 18
CHAPTER 3: METHODOLOGY ............................................................................... 21
3.1 Introduction .......................................................................................................... 21
3.2 Assessment of wind energy potentiality .............................................................. 21
3.2.1 General climate of Malaysia ...................................................................... 21
3.2.2 Wind data collection and site description .................................................. 23
3.2.3 Wind data adjustment ................................................................................ 26
3.2.4 Data description ......................................................................................... 27
3.2.5 Analysis procedure .................................................................................... 30
ix
3.2.5(a) Wind speed distribution parameters ............................................ 30
3.2.5(b) Weibull distribution function ...................................................... 31
3.2.5(c) Most probable wind speed .......................................................... 33
3.2.5(d) Maximum energy carrying by the wind speed ............................ 34
3.2.5(e) Wind power density .................................................................... 34
3.2.5(f) Wind energy density ................................................................... 35
3.2.5(g) Wind rose plot ............................................................................. 35
3.3 Contour Mapping of wind energy ........................................................................ 36
3.3.1 Interpolation and extrapolation of data ..................................................... 36
3.3.2 Data Analysis ............................................................................................ 37
CHAPTER 4: RESULTS AND DISCUSSIONS ........................................................ 40
4.1 Introduction .......................................................................................................... 40
4.2 Assessment of wind energy potentiality .............................................................. 40
4.2.1 Diurnal wind speed variations ................................................................... 41
4.2.2 Monthly and yearly mean wind speed variations ...................................... 47
4.2.3 Variations of standard deviation, shape factor (k) and scale factor (c) ..... 54
4.2.4 Wind power and energy density ................................................................ 57
4.2.5 Weibull distribution and cumulative distribution ...................................... 63
4.2.6 Polar diagrams ........................................................................................... 75
4.3 Contour mapping of mean wind speed in Peninsular Malaysia .......................... 84
CHAPTER 5: CONCLUSIONS AND SUGGESTIONS ........................................... 89
5.1 Introduction .......................................................................................................... 89
5.2 Assessment of wind energy potentiality .............................................................. 89
5.3 Contour maps ....................................................................................................... 92
5.4 Suggestions for future work ................................................................................. 93
APENDICES .................................................................................................................. 96
Appendix A Predicted monthly basis hourly surface wind speed data ....................... 96
Appendix B Predicted contour mapping on mean wind speed ................................. 123
x
Appendix C Relevant publication ............................................................................. 133
REFERENCES ............................................................................................................ 134
xi
LIST OF FIGURES
Figure 1.1 Global environmental changes and its effect on human health. ...................... 2
Figure 1. 2 Worldwide wind energy installed capacity (Data: GWEC). .......................... 5
Figure 3.1 Location of the selected Meteorological Stations in Peninsular Malaysia .... 39
Figure 4.1 Diurnal variation of wind speed at Batu Embun. ......................................... 42
Figure 4.2 Diurnal variation of wind speed at Bayan Lepas. .......................................... 42
Figure 4.3 Diurnal variation of wind speed at Butterworth ............................................ 43
Figure 4.4 Diurnal variation of wind speed at Cameron Highland ................................. 43
Figure 4.5 Diurnal variation of wind speed at Chuping .................................................. 43
Figure 4.6 Diurnal variation of wind speed at Ipoh ........................................................ 44
Figure 4.7 Diurnal variation of wind speed at KLIA Sepang ......................................... 44
Figure 4.8 Diurnal variation of wind speed at Kota Bharu ............................................. 44
Figure 4.9 Diurnal variation of wind speed at Kuala Krai .............................................. 45
Figure 4.10 Diurnal variation of wind speed at Kuala Terengganu ................................ 45
Figure 4.11 Diurnal variation of wind speed at Kuantan ................................................ 45
Figure 4.12 Diurnal variation of wind speed at Malacca ................................................ 46
Figure 4.13 Diurnal variation of wind speed at Mersing ................................................ 46
Figure 4.14 Diurnal variation of wind speed at Senai ..................................................... 46
Figure 4.15 Diurnal variation of wind speed at Sitiawan................................................ 47
Figure 4.16 Monthly mean wind speed at Batu Embun .................................................. 49
Figure 4.17 Monthly mean wind speed at Bayan Lepas ................................................. 49
Figure 4.18 Monthly mean wind speed at Butterworth................................................... 50
Figure 4.19 Monthly mean wind speed at Cameron Highland ....................................... 50
Figure 4.20 Monthly mean wind speed at Chuping ........................................................ 50
Figure 4.21 Monthly mean wind speed at Ipoh............................................................... 51
Figure 4.22 Monthly mean wind speed at KLIA Sepang................................................ 51
Figure 4.23 Monthly mean wind speed at Kota Bharu ................................................... 51
Figure 4.24 Monthly mean wind speed at Kuala Krai .................................................... 52
xii
Figure 4.25 Monthly mean wind speed at Kuala Terengganu ........................................ 52
Figure 4.26 Monthly mean wind speed at Kuantan ........................................................ 52
Figure 4.27 Monthly mean wind speed at Malacca ........................................................ 53
Figure 4.28 Monthly mean wind speed at Mersing......................................................... 53
Figure 4.29 Monthly mean wind speed at Senai ............................................................. 53
Figure 4.30 Monthly mean wind speed at Sitiawan ........................................................ 54
Figure 4.31 Weibull and observed wind speed frequencies at Batu Embun ................... 65
Figure 4.32 Weibull and observed wind speed frequencies at Bayan Lepas .................. 65
Figure 4.33 Weibull and observed wind speed frequencies at Butterworth ................... 66
Figure 4.34 Weibull and observed wind speed frequencies at Cameron Highland ........ 66
Figure 4.35 Weibull and observed wind speed frequencies at Chuping ......................... 66
Figure 4.36 Weibull and observed wind speed frequencies at Ipoh ............................... 67
Figure 4.37 Weibull and observed wind speed frequencies at KLIA Sepang ................ 67
Figure 4.38 Weibull and observed wind speed frequencies at Kota Bharu .................... 67
Figure 4.39 Weibull and observed wind speed frequencies at Kuala Krai ..................... 68
Figure 4.40 Weibull and observed wind speed frequencies at Kuala Terengganu ......... 68
Figure 4.41 Weibull and observed wind speed frequencies at Kuantan ......................... 68
Figure 4.42 Weibull and observed wind speed frequencies at Malacca ......................... 69
Figure 4.43 Weibull and observed wind speed frequencies at Mersing ......................... 69
Figure 4.44 Weibull and observed wind speed frequencies at Senai .............................. 69
Figure 4.45 Weibull and observed wind speed frequencies at Sitiawan ......................... 70
Figure 4.46 Cumulative distribution function at Batu Embun ........................................ 70
Figure 4.47 Cumulative distribution function at Bayan Lepas ....................................... 71
Figure 4.48 Cumulative distribution function at Butterworth ......................................... 71
Figure 4. 49 Cumulative distribution function at Cameron Highland ............................ 71
Figure 4.50 Cumulative distribution function at chuping ............................................... 72
Figure 4.51 Cumulative distribution function at Ipoh ..................................................... 72
Figure 4.52 Cumulative distribution function at KLIA Sepang ...................................... 72
xiii
Figure 4.53 Cumulative distribution function at Kota Bharu ......................................... 73
Figure 4.54 Cumulative distribution function at Kuala Krai .......................................... 73
Figure 4.55 Cumulative distribution function at Kuala Terengganu .............................. 73
Figure 4.56 Cumulative distribution function at Kuantan .............................................. 74
Figure 4.57 Cumulative distribution function at Malacca .............................................. 74
Figure 4.58 Cumulative distribution function at Mersing ............................................... 74
Figure 4.59 Cumulative distribution function at Senai ................................................... 75
Figure 4.60 Cumulative distribution function at Sitiawan .............................................. 75
Figure 4.61 Wind rose-wind direction for the years 2008-2009, Batu Embun ............... 77
Figure 4.62 Wind rose-wind direction for the years 2008, Lepas ................................... 77
Figure 4.63 Wind rose-wind direction for the years 2008-2009, Butterworth................ 78
Figure 4.64 Wind rose-wind direction for the years 2008-2009, Cameron Highland .... 78
Figure 4.65 Wind rose-wind direction for the years 2008-2009, Chuping ..................... 79
Figure 4.66 Wind rose-wind direction for the years 2008-2009, Ipoh............................ 79
Figure 4.67 Wind rose-wind direction for the years 2008-2009, KLIA Sepang ............. 80
Figure 4.68 Wind rose-wind direction for the years 2008-2009, Kota Bharu ................ 80
Figure 4.69 Wind rose-wind direction for the years 2008-2009, Kuala Krai ................. 81
Figure 4.70 Wind rose-wind direction for the years 2008-2009, Kuala Terengganu ..... 81
Figure 4.71 Wind rose-wind direction for the years 2008-2009, Kuantan ..................... 82
Figure 4.72 Wind rose-wind direction for the years 2008-2009, Malacca ..................... 82
Figure 4.73 Wind rose-wind direction for the years 2008-2009, Mersing...................... 83
Figure 4.74 Wind rose-wind direction for the years 2008-2009, Senai .......................... 83
Figure 4.75 Wind rose-wind direction for the years 2008-2009, Sitiawan ..................... 84
Figure 4.76 Contour Map on predicted monthly mean wind speed (m/s) for January ... 86
Figure 4.77 Contour Map on predicted monthly mean wind speed (m/s) for
December ........................................................................................................................ 87
Figure 4.78 Contour Map on predicted yearly mean wind speed (m/s) .......................... 88
Figure B1 Contour Map on predicted monthly mean wind speed (m/s) for February .. 123
Figure B2 Contour Map on predicted monthly mean wind speed (m/s) for March ...... 124
xiv
Figure B3 Contour Map on predicted monthly mean wind speed (m/s) for April ........ 125
Figure B4 Contour Map on predicted monthly mean wind speed (m/s) for May ......... 126
Figure B5 Contour Map on predicted monthly mean wind speed (m/s) for June ......... 127
Figure B6 Contour Map on predicted monthly mean wind speed (m/s) for July ......... 128
Figure B7 Contour Map on predicted monthly mean wind speed (m/s) for August .... 129
Figure B8 Contour Map on predicted monthly mean wind speed (m/s) for
September ...................................................................................................................... 130
Figure B9 Contour Map on predicted monthly mean wind speed (m/s) for October ... 131
Figure B10 Contour Map on predicted monthly mean wind speed (m/s) for
November ...................................................................................................................... 132
LIST OF TABLES
Table 3.1 The location and elevation of the selected stations ......................................... 24
Table 3.2 Monthly basis hourly surface wind speed data at Batu Embun in 2008 ......... 28
Table 3.3 Monthly basis hourly surface wind speed data at Batu Embun in 2009 ......... 28
Table 3.4 Monthly basis hourly surface wind speed data at Butterworth in 2008 .......... 29
Table 4.1 Monthly standard deviation and weibull parameters (k, c) ............................. 55
Table 4.2 Monthly standard deviation and Weibull parameters (k, c) ............................ 56
Table 4. 3 Yearly mean wind speed, standard deviation, weibull parameters (k, c),
most probable wind speed and wind speed carrying max. energy .................................. 57
Table 4.4 Monthly wind power and energy density ........................................................ 59
Table 4.5 Monthly wind power and energy density ........................................................ 60
Table 4.6 Monthly wind power and energy density ........................................................ 61
Table 4.7 Yearly wind power density and wind energy density ..................................... 62
Table A1 Monthly basis hourly surface wind speed data at Butterworth in 2009 .......... 96
Table A2 Monthly basis hourly surface wind speed data at Cameron Highland in
2008 ................................................................................................................................. 97
Table A3 Monthly basis hourly surface wind speed data at Cameron Highland in
2009 ................................................................................................................................. 98
xv
Table A4 Monthly basis hourly surface wind speed data at Chuping in 2008 ............... 99
Table A5 Monthly basis hourly surface wind speed data at Chuping in 2009 ............. 100
Table A6 Monthly basis hourly surface wind speed data at Ipoh in 2008 .................... 101
Table A7 Monthly basis hourly surface wind speed data at Ipoh in 2009 .................... 102
Table A8 Monthly basis hourly surface wind speed data at Kuala Terenganu in
2008 ............................................................................................................................... 103
Table A9 Monthly basis hourly surface wind speed data at Kuala Terenganu in
2009 ............................................................................................................................... 104
Table A10 Monthly basis hourly surface wind speed data at KLIA Sepang in 2008 ... 105
Table A11 Monthly basis hourly surface wind speed data at KLIA Sepang in 2009 ... 106
Table A12 Monthly basis hourly surface wind speed data at Kota Bharu in 2008 ....... 107
Table A13 Monthly basis hourly surface wind speed data at Kota Bharu in 2009 ....... 108
Table A14 Monthly basis hourly surface wind speed data at Kuala Krai in 2008 ........ 109
Table A15 Monthly basis hourly surface wind speed data at Kuala Krai in 2009 ........ 110
Table A16 Monthly basis hourly surface wind speed data at Kuantan in 2008 ............ 111
Table A17 Monthly basis hourly surface wind speed data at Kuantan in 2009 ............ 112
Table A18 Monthly basis hourly surface wind speed data at Lepas in 2008 ................ 113
Table A19 Monthly basis hourly surface wind speed data at Lepas in 2009 ................ 114
Table A20 Monthly basis hourly surface wind speed data at Malacca in 2008 ............ 115
Table A21 Monthly basis hourly surface wind speed data at Malacca in 2009 ............ 116
Table A22 Monthly basis hourly surface wind speed data at Mersing in 2008 ............ 117
Table A23 Monthly basis hourly surface wind speed data at Mersing in 2009 ............ 118
Table A24 Monthly basis hourly surface wind speed data at Senai in 2008 ................ 119
Table A25 Monthly basis hourly surface wind speed data at Senai in 2009 ................ 120
Table A26 Monthly basis hourly surface wind speed data at Sitiawan in 2008 ........... 121
Table A27 Monthly basis hourly surface wind speed data at Sitiawan in 2009 ........... 122
xvi
NOMENCLATURE
kWh Kilo Watt Hour
TWh Tera Watt Hour
GDP Gross Domestic Product
PPP Purchasing Power Parity
GW Giga Watt
Mtoe Million Tons of Oil Equivalent
GHG Green House Gas
RE Renewable Energy
R&D Research and Development
GIS Geographical Information System
PhD Doctor of Philosophy
WECS Wind Energy Conversion System
MECM Ministry of Energy, Communication and Multimedia
MMD Malaysian Meteorological Department
SN Skew Normal
RMSE Room Mean Square Error
NREL The National Renewable Energy Laboratory
VAWT Vertical Axis Wind Turbine
HAWT Horizontal Axis Wind Turbine
SREP Small & Renewable Energy Program
a.s.l Above Sea Level
PNNL The Pacific Northwest National Library
A Area (m2)
f(v) Weibull probability density function of observing wind speed
F(v) Weibull cumulative distribution function
xvii
k the dimensionless shape parameter showing how peaked the wind
distribution is
c the dimensionless scale parameter showing how windy the wind location
under consideration is.
V Velocity of the wind at height, z [m/s]
V0 Velocity of the wind at height, 0z [m/s]
α Wind speed power law co-efficient
h Height (m)
N Number of observations
n Number of constants
P/A Wind power density (W/m2)
E/A Energy density (kWh/m2/year)
ρ Density of air (Kg/m3)
σ Standard deviation
Г( ) Gamma function of ( )
1
CHAPTER 1: INTRODUCTION
1.1 Background
Our civilization thrives largely based upon the availability of inexpensive energy
sources and the expectation that these sources will not be exhausted. However, it is
known that the primary energy sources, the fossil fuels, will be exhausted, since they are
used at a much higher rate than they are formed in the earth‟s crust. Over the last
decade, it became apparent that the world's resources of fossil fuels are beginning to
come to an end. Estimates of energy resources vary but oil and gas reserves are thought
to come to an end in roughly 40 and 60 years respectively and coal reserves could only
be able to last another 200 years (Rahman & Lee, 2006). According to International
Energy Outlook 2009, World energy consumption will increase from 1.38x1023
kWh in
2006 to 1.62x1023
kWh in 2015 and 2.0x1023
kWh in 2030-a total increase of 44.2%
over the projection period 2006-2030 (Güler, 2009; IEA, 2009; Kaygusuz, 2010).
Another key reason to reduce our reliance on fossil fuels is the growing evidence of the
global warming phenomena. Since the industrial revolution, by burning these fossil
fuels, there is a dramatic increase in the release of carbon dioxide into the atmosphere.
The carbon dioxide gathers in the atmosphere and soaks up the long-wave, infrared
radiation reemitted from the earth that would normally be released into space. By
keeping this radiation in the earth‟s atmosphere, it has caused a rise in the earth‟s
temperature. This global warming effect will have far-reaching consequences if it is not
minimized as soon as possible. The natural balance of earth is very delicate and a rise in
temperature even by 1˚C or 2˚C can melt the ice caps causing wide spread flooding
across the world. Consequentially the United Nations Framework Convention on
Climate Change conference (UNFCCC) was to establish a legally binding international
2
agreement, whereby all the participating nations commit themselves to tackle the issue
of global warming and greenhouse gas emissions, and they targeted an average
reduction of 5.2% from 1990 levels by the year 2012. Large-scale and global
environmental hazards to human health include climate change, stratospheric ozone
depletion, loss of biodiversity, changes in hydrological systems and the supplies of
freshwater, land degradation and stress on food-producing systems. Indoor air pollution
from burning solid fuels causes a lot of death in Asia, and it is about 65% of the world
total. The reasons behind the human health hazardous are shown in Figure 1.1.
Figure 1.1 Global environmental changes and its effect on human health.
(WHO, 2009)
Renewable energies are regarded as a key factor in mitigating global climate change in
the future. Among various renewable energy sources, wind energy, in particular, has
achieved maturity in the energy market, and has experienced the greatest growth
worldwide over the past few years (Yue et al., 2001). According to the assessment of
the Intergovernmental Panel on Climate Change concerning wind energy potential,
intermittent wind power on a large grid can contribute an estimated 15-20% of annual
Human health
Climate change
Desertification and
land degradation
Stratospheric ozone
depletion
Biodiversity loss and
ecosystem function
Freshwater decline
Diverse pathways
UV exposure
Agroecosystem
productivity
Population
displacement
Decline loss and
ecosystem function
Water quantity
and safety Altered
precipitation
3
electricity production without special arrangements for storage, backup, or load
management. Renewable energy sources are easily accessible to humankind around the
world. It is not only available in a wide range but is also abundant in nature. Increased
use of wind energy and other renewable energy sources will spur economic growth,
create a job opportunity, enhance national security, protect consumers from price spikes
or supply shortages associated with global fuel markets and dramatically reduce the
pollutant that is warming the planet which causes greenhouse effect (IPCC, 2010; Varun
et al., 2009).
According to estimation done by the international Energy Agency (IEA), a 44.2%
increase in global energy consumption is foreseen by 2030, with 70% of the growth in
demand coming from developing countries. Malaysia is one of the most developing
countries, with GDP of US$15,400 per capita (PPP basis), and steady GDP growth rate
of 4.6 in 2009 (IMF, 2010; Saidur & Lai, 2011). The economy of Malaysia grew by 5%
in 2005 and overall energy demand is expected to increase at an average rate of 6% per
annum. In parallel with the rapid economic development of Malaysia, final energy
consumption grew at the rate of 5.6% from 2000 to 2005 to reach 38.9 Mtoe in 2005.
The final energy consumption is expected to be 98.7 Mtoe in 2030, nearly three times
the 2002 level (Balo, 2011; Oh & Chua, 2010b; Saidur et al., 2009a). The industrial
sector will have the highest growth rate of 4.3 percent. Industrial sector accounted for
some 48% of total energy use in 2007, which represents the highest percentage. It is
estimated that the natural-gas reserve is expected to last for around 70 years, while oil
is expected to be depleted in 16 years at the current rate of usage (Poh & Kong, 2002;
Saidur et al., 2009b).
Malaysia is in the midst of an era of vigorous industrial growth brought about by strong
domestic demand together with its significant science and technology development. The
government‟s vision of turning Malaysia into a humane industrialized country by the
4
year 2020 will have a great impact on the usage of energy in the country. In the next
three decades, Malaysia plans to develop itself in such a manner that it will not only be
a consumer of technology but also contribute to the fulfillment of the scientific and
technological needs of the future. Malaysia has also committed itself under Articles 4
and 12 of the United Nations Framework Convention on Climate Change (UNFCCC) to
prepare a national greenhouse gas (GHG) inventory. Accordingly, it has planned to
review and update the assessment of vulnerability to climate change, and assess
adaptation needs and prepare its initial National Communications to the Conference of
Parties (COP). Malaysia is also a signatory to the Kyoto Protocol.
The crucial challenge facing the power sector in Malaysia is the issue of sustainability
that is to ensure the security and reliability of energy supply and the diversification of
the various energy resources. In Malaysia, green technology application is seen as one
of the sensible solutions, which are being adopted by many countries around the world
to address the issues of energy and environment simultaneously (Leo, 1996). The
Government of Malaysia declared the Eighth Malaysian Plan in 2001 where RE was
regarded as the fifth fuel in the new five-fuel strategy in the energy mix and set a target
of 5% (600 MW) RE contribution in the electricity mix by the year 2005. However, the
development pace of RE in Malaysia is rather slow and still at its nascent stage, with its
current contribution at around 1% only of the total energy mix, even though the fifth
fuel policy had been announced a decade ago. The notion is further pursued in the 9th
Malaysia Plan (2006-2010) which has also set a target of 5% RE in the country‟s energy
mix (Oh et al., 2010; Rahman & Lee, 2006; Zamzam et al., 2003). In Malaysia, little
effort has been made on the use of wind energy. The potential for wind energy
generation in Malaysia depends on the availability of the wind resource. The availability
of the wind resource varies with location.
5
Among the sources of RE, the wind energy is the fastest growing energy technology in
terms of percentage of yearly growth of installed capacity per technology source (Akdag
& Güler, 2010). The worldwide wind energy installed capacity from 1996-2010 has
been shown in Figure 1.2. As Harborne and Hendry (2009) noticed wind has advanced
more quickly to commercialization than other technologies such as solar power, fuel
cells and wave power with relatively little R&D expenditure. By the end of 1999,
around 70% of the world-wide wind energy capacity was installed in Europe, a further
19% in North America and 9% in Asia and the Pacific (Ackermann & Söder, 2002).
Figure 1. 2 Worldwide wind energy installed capacity (Data: GWEC).
(GWEC, 2011b)
To build-up wind farm, it is necessary to carry out a general assessment of the wind
energy potential nationwide. This can then be followed with detailed assessment in the
promising locations. These assessments must be completed before making any final
decision to install wind energy plant. The wind resource is a crucial step in planning a
wind energy project and detailed knowledge of the wind at a site is needed to estimate
the performance of a wind energy project.
0
20
40
60
80
100
120
140
160
180
200
Glo
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6
By keeping in mind the critical situation of energy worldwide and considering the
present and future energy scenario of Malaysia, this dissertation will focus on the
assessment of wind energy potentiality and wind energy mapping in Peninsular
Malaysia. For assessing the wind energy potentiality, in the case of HAWT, it is very
much necessary to set-up the wind turbine in the direction of most available wind speed,
so wind direction has been also determined. For determining the wind direction of the
available wind, a reliable software „wind rose‟ has been applied in this study. This
dissertation is also focused on the contour mapping of Peninsular Malaysia. For
representing the contour mapping of Peninsular Malaysia, a reliable method,
Geographical Information System (GIS), has been implemented.
1.2 Wind energy basics
Wind is simply air in motion. It is caused by the uneven heating of the Earth‟s surface
by the sun. During the daytime, air on the land surface gets heated up faster than air on
the water surface. The hot air expands and rises to the atmosphere and the cold air over
the water surface tries to move to that place due to low pressure on the land as a result
wind is produced. At nighttime, the process is reversed, the air on the land surface gets
cooled faster than the air on the water surface, and the same principle is applied for the
atmospheric winds. Sun is the ultimate source of energy for all renewable and almost all
conventional energy sources. On an average earth receives 1.74x1017
watts of power
from which about 1 to 2 percent is converted into wind energy, which accounts to 50 to
100 times more than the energy converted into biomass by all plants on earth (Garlapati,
2006; Li, 2011; Nasir, 1993).
The terms “wind energy” or “wind power” describes the process by which the wind is
used to generate mechanical power or electricity. Wind turbines convert the kinetic
energy in the wind into mechanical power. In a conventional wind energy conversion
7
system (WECS), the wind turbine traps the wind by means of rotor blades connected to
the rotor hub. The gathered mechanical energy from the wind is transferred to a low-
speed shaft and transmits the power to a high-speed shaft through a gearbox. The high
speed shaft is connected to an electric motor which converts the mechanical energy of
the wind to electrical energy. Induction generator does this process of converting
mechanical energy into electrical energy and the output power produced is sent to the
grid via transmission lines (Miller et al., 1997; Siegfried, 1998).
1.3 Objectives of the study
The vision for Malaysia stipulates the overall target of becoming an industrialized
country by 2020. Similarly, the Ministry of Energy, Communication and Multimedia
(MECM) has elaborated the vision for the energy sector for 2020. According to MECM
vision, every member of Malaysian society should have access to high quality, secure
electrical power and other convenient forms of energy supplied in a sustainable,
efficient and cost-effective manner. However, Malaysia‟s energy sources primarily
comprise oil, natural gas, hydropower and coal and recently renewable energy sources
such as solar power and biomass are being exploited. In Malaysia, wind energy
conversion is a serious consideration. The potential for wind energy generation in
Malaysia depends on the availability of the wind resource. The availability of the wind
resource varies with location. It is necessary to first carry out a general assessment of
the wind energy potential nationwide. This can then be followed with detailed
assessment in promising locations. These assessments must be completed before further
action can be decided on. The wind resource is a crucial step in planning a wind energy
project and detailed knowledge of the wind at a site is needed to estimate the
performance of a wind energy project, keeping these in mind the objectives of this
dissertation are as follows:
8
To evaluate the availability of wind energy resources in Peninsular Malaysia
based on the hourly surface wind speed and direction data.
To develop the contour map to identify the potential wind regions in Peninsular
Malaysia.
1.4 Scope of the study
This dissertation deals with the assessment of wind energy potentiality at various
locations in Peninsular Malaysia. At first, it is needed to collect the data of wind speed
from the Malaysian Meteorological Department. As many years wind speed data can be
collected, it will be better for reliable wind energy assessment and contour mapping.
The main scopes of this study are given below:
As the wind turbines are generally installed at the height of 50 m, 100 m or 150
m and the wind resource of Malaysia is not so good, the 10 m height wind speed
data has to be converted to 100 m wind speed data by using power law.
Calculating the diurnal, monthly and yearly mean wind speed from the surface
mean hourly wind speed. By plotting graphically the diurnal and monthly wind
speed, the characteristics of wind speed have to be analyzed.
The Weibull distribution function and cumulative distribution function are to be
plotted and from these two distribution functions wind characteristics and
suitable sites for the wind energy project has to be selected. From cumulative
function, it is also being determined how many hours a wind project can be
functional.
The monthly and annually wind power and wind energy density for all the sites
in Peninsular Malaysia are to be calculated from the meteorological wind speed
data and distribution function.
9
As the wind speed direction is very important for the wind project, the maximum
wind flowing directions can be established by wind rose software.
At last, by using the GIS method the contour map of Peninsular Malaysia will be
presented.
1.5 Limitations of the study
Whenever the research proposal for this study was submitted, the surface wind speed
and direction data was free of charge but from the year 2010 and onward Malaysian
Meteorological Department (MMD) has introduced a new policy that everyone has to
purchase wind speed data. However, to understand the weather behavior well, an
adequate source of measuring weather data is very much essential. The relationship
between the climatic data and energy performance of wind machines rely heavily on
both the quality and quantity of the meteorological observations. Though, it is believed
that wind speed data of shorter periods, less than 30 years, may inherit variations from
the long term average but most of the developing countries do not possess accurate long
term data (Lun & Lam, 2000; Weisser, 2003b). As a result, for this study initially it has
been decided to study 10-year data of 32 stations in Peninsular Malaysia as in this study
considered only Peninsular Malaysia. MMD fixes the rate of RM 1,440 for one year
data of one station data. If it has been taken 10-year data of 32 stations then it is needed
about RM 460,800, which is quite impossible for any project to provide. At last, it has
been decided altogether to take two-year data of 15 stations for which cost around RM
46,080. This amount had been paid from the UMRG project (Project No. RG056-
09AET) and IPPP project (PS091/2009C).
10
1.6 Outline of the dissertation
This dissertation comprises five chapters. The contents of each chapter are described
briefly here:
CHAPTER 1: This is the introduction chapter, gives the brief overview on world
energy related problems, Greenhouse gases and energy demand trend. Malaysian energy
status and why Malaysia needs the RE has been briefly discussed. Backgrounds of the
study, objectives and scope of study have been discussed in this chapter.
CHAPTER 2: This is the literature review chapter and in this chapter the present works
which have been done in this field have been highlighted. The literature review of this
study has been divided into two parts namely assessment of wind energy potentiality
and wind energy contour mapping for Peninsular Malaysia.
CHAPTER 3: Methodology chapter where the method of assessing the wind energy
potentiality has been described thoroughly. 2-parameter Weibull distribution model has
been taken for the wind energy assessment in this dissertation. For showing the wind
direction the WRPLOT software, version 5.9 has been used. Geographical Information
System (GIS), ArcGIS 9.3, has been used to present the predicted monthly and yearly
mean wind speed in the form of contour maps.
CHAPTER 4: This is the result and discussion chapter. In this chapter, the result of the
wind energy assessment has been discussed thoroughly. The diurnal, monthly and
yearly wind speed variations, wind power and energy density, Weibull and Cumulative
distribution, Wind directions, etc. have been discussed. The contour maps of wind
energy in Peninsular Malaysia have been discussed in this chapter.
CHAPTER 5: Conclusions and suggestions chapter. In this chapter the main outcome
of the dissertation has been given very precisely. The main outcomes of the assessment
11
of wind energy potentiality and wind energy mapping have been given appositely. The
valuable suggestions have been given for the future work.
12
CHAPTER 2: LITERATURE REVIEW
2.1 Introduction
In recent years, wind energy (wind turbine power generation) applications have grown
rapidly to meet environmental protection requirements and electricity demands. Global
capacity of wind power installations grew by 35.8 giga watts (GW) in 2010, a 22.5%
increase on the 158.7 GW installed at the end of 2009. Currently, wind energy
contributes less than 1% to total world electricity supply. However, wind energy grows
at an exponential rate, from 20% to 40% per year and BTM consult ApS estimates that
by 2012 wind energy will contribute 2% of world energy supply (GWEC, 2011a; Paul,
2007). Numerous researches related to wind energy assessment and mapping have been
carried out with respect to its application, potential, performance, optimization,
integration with other kinds of power generation systems, etc.
The literature review of this dissertation will give an overview of the present status of
the related field and show the future work of the relevant field. This chapter presents a
literature review on the assessment of wind energy potentiality and contour mapping of
Peninsular Malaysia. For assessing the wind energy potentiality, the most versatile
method „2-parameters Weibull distribution function‟ has been used and for mapping
GIS method adopted in this study. A good collection of PhD and Master thesis, journal
articles, reports, conference papers, internet sources and books have been used for this
study. It should be mentioned that about 80-90% of the journal papers are collected
from most pertinent and prestigious peer reviewed international referred journals such
as Energy, Energy Policy, Applied Energy, Renewable and Sustainable Energy
Reviews, Renewable Energy, Journal of Wind Engineering and Industrial
13
Aerodynamics, Environmental Research and International Journal of Energy Research.
Some international high quality masters and PhD theses in the relevant field by
Garlapati (2006); Khan (2004); Nasir (1993); Lackner (2008); Liddle (2008) may be
considered as a strong support for this work. Moreover, a substantial amount of relevant
information has been collected through personal communication with the key
researchers around the world in this research area.
2.2 General history of wind technology
The history of wind power shows a general evolution from the use of simple, light
devices driven by aerodynamic drag forces; to heavy, material-intensive drag devices; to
the increased use of light, material-efficient aerodynamic lift devices in the modern era.
But it shouldn't be imagined that aerodynamic lift (the force that makes airplanes fly) is
a modern concept that was unknown to the ancients. The earliest known use of wind
power, of course, is the sail boat, and this technology had an important impact on the
later development of sail-type windmills. Wind indeed was almost the only source of
power (Musgrove, 1987) for ships until this day in some locations; clearly show their
debt to the sailing ship, with cloth sails attached to radial wooden spars. This allows the
power output to be limited in strong winds by wrapping part of each sail around its spar.
The Chinese reportedly invented the windmill. West of China in Persia windmills were
used around 200 BC. By 1000 A.D. the Vikings had explored and conquered the North
Atlantic because of the power of the wind. Windmills were introduced to the western-
world in the 1100‟s AD. The earliest references that appear in the literature are 1105‟s
AD in Arless France, 1180 A.D. in Normandy and 1191 A.D. in England. By 13th
century windmills were used extensively throughout most of Europe. Around the 14th
century, the Dutch used passive wind power to pump water from flooded fields with a
device called a windmill. Much of Holland is below sea-level and is often flooded. The
14
windmill was the transition invention that led to modern wind power turbines and other
devices.
The windmills refer to the operation of grinding or milling grain. This application was
so common that most wind turbines were called wind mills, even when they actually
pumped water or performed some other function. By the late 19th century, the multi-
vane windmill was invented in the United States to pump groundwater; this assisted in
the settlement of the West and Midwest by providing water for humans, livestock, and
railroads.
In the 1930s a Frenchman named G. J. M. Darrieus invented a wind power design in the
shape of an eggbeater. By 1940 there were around 6 million windmills of the type
introduced in the United States almost a century earlier in 1854. In 1941 near Rutland,
Vermont a giant 1.5 MW machine powered the Central Vermont Public Service electric
grid. Just as solar power technology accelerated during the oil embargo of 1973 - 1974,
wind power made large strides. Westinghouse Electric Company received Department
of Energy (DOE) / NASA contracts for building large scale wind turbines. The greatest
capacity wind turbine was built in Oahu, Hawaii, with a 3.2 MW power rating.
A 25% tax credit for investors of wind turbines was made through the Public Utilities
Regulatory Policies Act (PURPA) of 1978. Between 1981 and 1984 6,870 turbines were
installed in California. At the end of 1983, there were around 4600 wind turbines
operating out of California. These turbines together produced 300000 KW of electricity.
The change in prices of wind power electricity dropped from 14 cents per kWh in 1985
to 5 cents per kWh in 1994 making wind power a much greater competitor in the
electricity market (Andersen, 2011; Telosnet, 2011; Wikipedia, 2011).
2.3 Review on assessment of wind energy potentiality
Wind energy site assessment evaluates the potential for a given site to produce energy
from wind turbine. Typically, wind energy development is initiated by a private
15
company, government body, or utility that is interested in producing wind energy in a
particular region. The process generally begins with a “preliminary area identification‟,
which entails identifying a relatively large area where wind energy development is
viable. This type of rudimentary assessment has been going on all over the world to
assist the final assessment to the Governmental agencies. Keyhani et al. (2010) assessed
the wind energy potentiality as a power generation source in the capital of Iran. For
doing this, they used the wind speed data over an eleven-year period from 1995-2005.
The wind speed data was collected from the Meteorological department of Iran. The
authors showed that the diurnal, monthly and annual wind speed variation over the
projected period. From these data, by the 2-parameter Weibull distribution, the authors
evaluated the wind energy potentiality at Tehran. Wind direction has been also shown
by the Wind Rose Polar diagram. According to the authors' estimation, the monthly
mean wind speed values are between 4.00 m/s and 5.00 m/s, but some are over 5.00
m/s, while only a few are over 5.50 m/s and under 3.50 m/s. The yearly mean wind
speed values range from 3.86 m/s to 4.5m/s. The authors found that the monthly
maximum wind power density at Tehran was 106.49 W/m2, whereas the yearly
maximum wind power density was 115.5 W/m2
in 2003.
Fyrippis et al. (2010) evaluated the wind energy potentiality in Naxos Island, Greece.
For evaluating the wind energy potentiality, Weibull distribution and Rayleigh
distribution have been used. To evaluate the performance of these distribution methods,
the root mean square error (RMSE) parameter, the chi-square (χ2) test and the modeling
efficiency test have been implied. From these test, it was found that the Weibull
distribution represented the actual data better than the Rayleigh distribution. It was
found that the highest and lowest value of the mean wind power density was 730 W/m2
and 180 W/m2 respectively, while the mean annual wind power density was estimated to
16
be 420 W/m2. It is concluded that the region falls in the wind class of 7, and it is
suitable for large scale wind energy production.
Angreh et al. (2010) made the assessment of renewable energy potential at Aqaba in
Jordan. To assess the renewable energy potentiality, they implemented the skew-normal
statistical method. They analyzed the daily mean wind speed of 10 years and five years
of solar insolation level data. The goodness of fit of SN models has been examined
graphically and statistical tests through chi-square (χ2) and Kolmogorob-Smirnov tests.
After analyzing the authors strongly recommended that the fitted SN distribution as an
appropriate model for daily mean wind speeds data, since the fitted SN-distribution
passes both graphical and goodness fit tests. The maximum wind power density was
found to be 304.32 W/m2 and 326.75 W/m
2 by Skew-Normal test and from
Meteorological data respectively.
Zaharim et al. (2009) analyzed the wind speed in the east coast of Malaysia by using
Weibull, Lognormal and Gamma distribution functions. Two-year data have been
collected from the University of Malaya and University of Terengganu stations. It is
found that the highest and lowest wind speeds are found to be 6.54 m/s and 2.04 m/s,
whereas the mean wind speed was about 3.7 m/s. From the distribution functions, it is
found that the all distribution functions represent a narrow peak for the whole
distributions in the range of 2.0 m/s to 3.0 m/s.
Khadem and Hussain (2006) studied the feasibility of wind resources in Kutubdia
Island, Bangladesh. For assessing the feasibility, they collected the wind speed data
from Bangladesh Meteorological Department (BMD) and Bangladesh Centre for
Advance Studies (BCAS). From the wind speed data of BMD stations, they found the
yearly mean wind speed was 1.80 m/s at 13 m height over the 10 years period, whereas
from BCAS data, they found the yearly mean wind speed was 4.40 m/s at 25 m height.
17
Their main objective of this study was to assess the wind resources over the island and
to predict good locations for wind energy generation. To do this, they implied the Wind
Atlas Analysis and Application Program (WAsP) for vertical and horizontal
extrapolation, which uses time series of wind data along with information on surface
characteristics of the location. By applying WAsP, they developed the frequency of
wind speed, monthly and yearly Weibull parameters, wind directions by wind rose and
the wind atlas at 50 m height. It was found that the maximum mean wind speed value
was 5.79 m/s, whereas the maximum power density was 250 W/m2.
Tarawneh and Sahin (2003) have estimated the mean wind speed in some parts of
Jordan using standard regional dependence function (SRDF) by using the wind speed
records of 1977-1998 at the Jordanian Meteorological Department. The SRDF gives
flexibility in obtaining dependent weighting factors, leading to more realistic point
estimations. Celik (2003) has estimated monthly wind energy production using Weibull
representative wind data in the time series format for a total of 96 months from five
different locations in the world. The Weibull parameters (shape factor and scale factor)
were determined based on wind distribution statistics, calculated from measured data
with the help of gamma function. The main objective of this study was to estimate the
wind energy output for small-scale systems. Using the Weibull representative and
measured data in the time-series format, the monthly energy outputs were calculated for
a wind turbine of 50 W nominal power. The author concluded from this study that the
Weibull-representative data are very successful in representing the time-series data.
Chang et al. (2003) have assessed the wind characteristics and wind turbine
characteristics in Taiwan by analyzing the 39 years wind speed data source (1961–
1999) at 25 meteorological stations. To investigate wind characteristics and wind
turbine characteristics, a 2-stage evaluation procedure has been carried out. To get the
basic information regarding wind resources, the yearly wind speed distribution and wind
18
power density have been evaluated. The wind turbine characteristics: the availability
factor, the capacity factor and wind turbine efficiency for different high-wind locations
were calculated and integrated to map out the wind energy resources. It was found that
the availability factor varies from 0.794 to 0.929, the wind turbine efficiency was
located between 0.246 to 0.29, and the capacity factor was between 0.45 to 0.64.
Sopian et al. (1995) analyzed the 10 years wind speed data of 10 stations for Malaysia.
The annual frequency distribution of wind speeds for the ten stations has been shown.
The wind distribution has been classified into four categories: (i) the month of April (ii)
the month of May-September (iii) the month of October and (iv) the months of
November-March. It is found that Mersing and Kuala Terngganu has the greatest wind
power potential in Malaysia.
2.4 Review on contour mapping for wind energy
Generally, the wind energy mapping system is designed to display regional (greater than
50,000 km2) distributions of the wind resource. The maps are intended to denote areas
where wind energy projects might be feasible. The national Renewable Energy
Laboratory (NREL) has developed an automated technique for wind resource mapping
to aid in the acceleration of wind energy deployment. The commercially available
geographic information system software packages have been used in mapping system
by NREL. Regional wind resource maps using this new system have been produced for
areas of the United States, Mexico, Chile, Indonesia, and China. Countrywide wind
resource assessments are under way for Philippines, the Dominican Republic, and
Mongolia. Some of the counties in the world like Argentina and Russia are scheduled to
begin in the near future (Schwartz, 1999). As fossil fuel has been depleted gradually,
most of the countries in the world are now interested in renewable energy expansion.
However, most of the countries still did not take any effective steps to develop contour
19
mapping but separately contour map development has been going on in the various
places all over the world. Some of them are given in this section.
Beccali et al. (2010) have estimated the wind speed over the complex terrain using the
generalized mapping regressor. For this study, the hourly mean wind speed data from 29
different stations of Sicilian territory have been collected. The curvilinear Component
Analysis (CCA) has been used to find the underlying manifold of data (the average
manifold) and to map it onto a p-dimensional output Y. The very important factor,
surface roughness that can influence the wind profile has been considered. To assess the
performances of the implemented models, the predicted values of the wind speed at 10
m a.g.l has been compared with those obtained by the NNRK approach. Finally, a map
has been obtained of the estimated average wind speed at 50 m a.g.l.
Fadare (2010) has produced the wind energy mapping for energy application in Nigeria
using the artificial neural networks. For doing this, the author used the Geographical
Information System (GIS) Software ArcView® 3.2. The author has analyzed 20 years
(1983-2003) wind speed data from 28 meteorological stations. From the coastal region
in the south to savannah region in the north, the monthly mean wind speed has been
varied greatly. The monthly mean wind speeds are found to be 7.0-13.1 m/s and 0.9-
13.1 m/s for the southern region and northern region respectively. The highest monthly
wind energy has been found to be 6027.7 W. The author has concluded that the ANN
based model has the acceptable accuracy with Mean Absolute Percentage Error
(MAPE) of 8.9% and correlation coefficient (r-value) of 0.9380 was found for
prediction of wind speed profile in Nigeria.
Ramachandra and Shruthi (2005) have employed the geographical information system
(GIS) to map the wind energy resources at Karnataka state and analyzed their variability
considering spatial and seasonal aspects. They developed a spatial database with the
20
wind speed data and used to evaluate of the theoretical potential through continuous
monitoring and mapping of the wind resources. The wind speed data have been
collected from the India Meteorological Department (IMD) in Karnataka of 29 stations.
The author did not consider the yearly mean wind speed less than 5 m/s as suitable for
generating energy, and they found Chikkodi, Horti, Kahanderayanahalli and
Kamkarhatti as the promising sites for harnessing wind energy. These sites have been
recommended for construction of wind farms (Ramachandra & Shruthi, 2007)
Khan et al. (2004) have generated a wind energy map of Bangladesh, which
incorporates several microscale features, such as terrain roughness, elevation, etc. with a
mesoscale model. A mesoscale map has been obtained from several global
climatological databases was adjusted for the 30-m elevation, and terrain condition,
which would suit the land profile of Bangladesh. The available surface measurement
data were investigated, corrected, correlated and compared with this model. From this
map, the authors have been found that the coastal belt of Bangladesh has an annual
average wind speed above 5 m/s, whereas the wind speed in the northeastern districts is
around 4.5 m/s.
21
CHAPTER 3: METHODOLOGY
3.1 Introduction
The methodology section comprises mainly two parts: assessment of wind energy
potentiality and contour mapping of wind energy for Peninsular Malaysia. In this
chapter, the methods of assessment of wind energy and contour mapping have been
discussed individually.
3.2 Assessment of wind energy potentiality
The assessment of the wind energy resource is a crucial step in planning a wind energy
project and detailed knowledge of the wind at a site is needed to estimate the
performance of a wind energy project. In this dissertation, Weibull distribution model
has been taken for the assessment for wind energy potentiality. Along with the Weibull
distribution model, general climate of Malaysia, wind data collection, site's description,
wind data adjustment, etc. have been clearly described in this section.
3.2.1 General climate of Malaysia
Malaysia, in the southeast part of Asia, has a geographic coordinate, and it lies on
latitude 2° 30'N and longitude 112° 30'E. The country is recognized by two lands mass,
which separated by South China Sea. One is in Peninsula Malaysia region, and another
two states (Sabah and Sarawak) are in Borneo Island and total up the sum 329,847
square kilometers (127,355 sq. mi.) with 27 million populations live in Malaysia.
The characteristic feature of the climate of Peninsular Malaysia is equatorial and is
characterized by fairly high but uniform temperatures (ranging from 23° to 31° C /73° to
22
88° F throughout the year), high humidity, and copious rainfall (averaging about 250
cm/100 in annually). Being located near the equator, the weather in Malaysia is
generally considered „hot‟ and ‟sunny‟. It is extremely rare to have a full day with clear
sky even during periods of severe drought. On the other hand, it is also rare to have a
stretch of a few days with completely no sunshine except during the northeast monsoon
seasons.
Though wind speed over the country is generally variable, there are, however, some
uniform periodic changes in the wind flow patterns. Based on these changes, four
seasons can be distinguished, namely, the southwest monsoon, northeast monsoon and
two shorter periods of inter-monsoon seasons. The southwest monsoon season is usually
established in the latter half of May or early June and ends in September. The prevailing
wind flow is generally southwesterly and light, below 7.725 m/s.
The northeast monsoon season usually commences in early November and ends in
March. During this season, steady easterly or northeasterly winds of 5.15 to 10.30 m/s
prevail. The east coast states of Peninsular Malaysia where the wind may reach 15.45
m/s or more during periods of strong surges of cold air from the north (cold surges).
During the two intermonsoon seasons, the winds are generally light and variable.
During these seasons, the equatorial trough lies over Malaysia (Exell & Fook, 1986;
Sopian et al., 1995).
It is worth mentioning that during the months from April to November, when typhoons
frequently develop over the west Pacific and move Westwards across the Philippines,
Southwesterly winds over the Northwest coast of Sabah and Sarawak region may
strengthen to reach 10.30 m/s or more. An average of 6 to 7 tropical cyclones traverses
over the Philippines and South China Sea per year. More precisely, it occurred 7 times
in 1996, 5 times in 1997, 4 times in 1998, 2 times in 1999, 7 times in 2000, 3 times in
23
2001, 5 times in 2002, 8 times in 2003, 12 times in 2004 and 4 times in 2005 (Pacheco
et al., 2007). For protecting any unexpected incident of wind turbine, a control strategy
which provides the Asian and Pacific area against the strong typhoon relates to the pitch
and yaw system can be used. With the regulation of the pitch angle and the yaw angle,
the load of blade, nacelle and tower structure could be reduced (Yen-Chieh et al., 2010).
The Typhoon II, a unique vertical axis wind turbine (VAWT), can also be applied in
this region. It provides improved performance with both a substantially higher degree of
efficiency and a wider range of exploitable wind speeds than those of the now
prevailing horizontal axis wind turbines (HAWT) (CTV, 2010).
3.2.2 Wind data collection and site description
The wind speed data for this study has been collected from the Malaysian
Meteorological Department (MMD) at Petaling Jaya, Selangor during the period of
2008-2009. MMD collected wind speed data from different stations throughout
Peninsular Malaysia. A 10 m height mast, made of steel in the solid tubular form was
used to install the anemometer and wind vane for selected stations. A rotating cup type
anemometer and a wind vane were both installed at the top of the mast for measuring
the surface wind speed and wind direction respectively. The temperature and the
relative humidity were also measured using a thermometer and a hygrometer
respectively. The reason for performing wind speed measurement at 10 m height was
that according to Katsoulis (1993), for climatological and practical reasons it has been
agreed that this should be the standard meteorological reference level in order to
achieve representative recording of the wind potential of the area. Furthermore, the
wind speed at higher heights could be calculated using the power law. Wind speed was
taken every 10 seconds and averaged over 5 minutes and stored in a data-logger. The 5-
minutes averaged data were further averaged over an hour. At the end of each hour, the
24
hourly mean wind speed was calculated and stored sequentially in a permanent memory
(Azami et al., 2009; Hrayshat, 2005; Keyhani et al., 2010).
Regions near the Equator may not be a good place for wind power generation, but
analysis of wind data at windy sites in Malaysia is important for prospective wind
power applications and for the estimation of available power density within a time
period. Though the SREP has targeted to generate 5% (600 MW) of the country's
electricity consumption from RE by 2005, only 0.3% were achieved. Obviously, the
progress in bringing RE generation into the mainstream has been slow due to several
reasons and limitations (Oh & Chua, 2010a). On the other hand, it is estimated that the
natural gas reserve is expected to last for around 70 years, while oil is expected to be
depleted in 16 years at the current rate of usage. To continue the economic development
in the current pace, there is no other way to meet the energy demand but RE. In this
study, 15 stations from the peninsular Malaysia, for initial wind energy assessment and
contour mapping, have been selected based on the availability of the wind speed data
and for evenly distribution all over the Peninsular Malaysia. The details of these stations
are given in Table 3.1.
Malaysia is situated right in the heart of South East Asia and is divided into two
geographical sections: Peninsular Malaysia and the East Malaysian provinces of Sabah
and Sarawak in North Borneo. The two parts are separated 650 km (403 miles) apart by
the South China Sea. Peninsular Malaysia's neighbors are Thailand and Singapore.
Sabah and Sarawak border Kalimantan (the Indonesian part of Borneo) and Sarawak
surrounds the tiny enclave of Brunei. The Andaman Sea is on the West Coast of the
peninsula. The East Coast of the peninsula, Sabah and Sarawak all adjoin the South
China Sea.
25
Table 3.1 The location and elevation of the selected stations
Station name Station ID Latitude ˚N Longitude ˚E Height a.s.l. (m)
Batu Embun 48642 3˚58΄ N 102˚21΄ E 59.5
Bayan Lepas 48601 5˚18΄ N 100˚16΄ E 2.8
Butterworth 48602 5˚28΄ N 100˚23΄ E 2.8
Cameron Highlands 48632 4˚28΄ N 101˚22΄ E 1545
Chuping 48604 6˚29΄ N 100˚16΄ E 21.7
Ipoh 48625 4˚34΄ N 101˚06΄ E 40.1
KLIA Sepang 48650 2˚44΄ N 101˚42΄ E 16.3
Kota Bharu 48615 6˚10΄ N 102˚17΄ E 4.6
Kuala Krai 48616 5˚32΄ N 102˚12΄ E 68.3
Kuala Terengganu 48618 5˚23΄ N 103˚06΄ E 5.2
Kuantan 48657 3˚47΄ N 103˚13΄ E 15.3
Malacca 48665 2˚16΄ N 102˚15΄ E 8.5
Mersing 48674 2˚27΄ N 103˚50΄ E 43.6
Senai 48679 1˚38΄ N 103˚40΄ E 37.8
Sitiawan 48620 4˚13΄ N 100˚42΄ E 7
The topography of Peninsular Malaysia is characterized by the central mountain ranges
running from north to south. A mountainous spine, known as the Main Range or
Banjaran Titiwangsa, runs from the Thai border southwards to Negeri Sembilan,
effectively separating the eastern and western parts of the peninsula. The highest peak,
Gunung Tahan, is 2,187 m a.s.l. In Sabah and Sarawak, a similar topography of high
mountain ranges occurs in the interior, with all ranges below 1,800 m except Mt
Kinabalu, which at 4,101 m a.s.l., is the highest peak in S.E. Asia. Four-fifths of
Peninsular Malaysia is covered by rainforest and swamp. The northern regions are
divided by a series of mountain ranges that rise abruptly from the wide, flat coastal
plains. The main watershed follows a mountain range about 80 km (50 mi) inland,
roughly parallel to the west coast. The rivers flowing to the east, south, and west of this
range are swift and have cut some deep gorges, but on reaching the coastal plains, they
become sluggish. The western coastal plain contains most of the country's population
and the main seaports, George Town (on the offshore Pulau Pinang) and Kelang
26
(formerly Port Swettenham). The eastern coastal plain is mostly jungle and lightly
settled. It is subject to heavy storms from the South China Sea and lacks natural harbors.
As a result of the configuration of the country and of the heavy rainfall, many rivers
originate in the mountains and fall to the sea on both sides of the peninsular. A number
of large rivers such as Sungai Rajang, Sungai Baram in Sarawak and Sungai
Kinabatangan in Sabah, originate from these mountainous areas. Rice cultivation is
practiced throughout the peninsula, but the main and traditional centers are the states of
Perlis, Kedah, Selangor, Kelantan, and mainland Pulau Pinang. Most of the larger
rubber and oil palm estates are located on the peninsula.
3.2.3 Wind data adjustment
The variation in velocity with altitude, called wind shear, is most pronounced near the
surface and the wind blows faster at higher altitudes because of the drag of the surface
(sea or land) and the viscosity of the air. Typically, in the daytime the variation follows
the 1/7th power law, which predicts that wind speed rises proportionally to the seventh
root of altitude. In the night time, or better when the atmosphere becomes stable, wind
speed close to the ground usually subsides, whereas at turbine hub altitude, it does not
decrease that much or may even increase.
As the wind speed changes with height and the anemometer at different meteorological
stations are set at different levels, it is necessary, prior to any analysis, to adjust the
recorded wind speed data to the same height. The wind power law has been recognized
as a useful tool and is often used in wind power assessments where the wind speeds at
the height of a turbine (>~ 50 meters) must be estimated from near surface wind
observations (~10 meters), or where wind speed data at various heights must be adjusted
to a standard height prior to use.
27
The wind profile power law relationship is:
)1.3(0
0
z
zvv
The exponent (α) is an empirically derived coefficient that varies dependent upon the
stability of the atmosphere. For neutral stability conditions, α is approximately 1/7, or
0.143 is commonly assumed to be constant in wind resource assessments, because the
differences between the two levels are not usually so great as to introduce substantial
errors into the estimates (usually < 50 m). However, when a constant exponent is used,
it does not account for the roughness of the surface, the displacement of calm winds
from the surface due to the presence of obstacles (i.e., zero-plane displacement), or the
stability of the atmosphere.
The value of the coefficient varies from less than 0.10 for very flat land, water or ice to
more than 0.25 for heavily forested landscapes and the typical value of 0.14 for low
roughness surfaces (Ramachandra et al., 2005; Zhou, 2008). The value 0.143 for the
co-efficient of α has been chosen for this experiment.
3.2.4 Data description
In this study, the hourly mean surface wind speed and direction data has been collected
from the Malaysian Meteorological Department. The MMD has collected these wind
speed data at the 10 m height from the ground. As the wind speed in Malaysia is not so
much potential and for the better distribution results, the 10 m height data have been
converted to 100 m height wind speed data. After that the hourly surface wind speed
data has been averaged in monthly basis wind speed data. Some of them are given here
in Tables 3.2 to 3.4 and rests of them are given in the Appendix A.
28
Table 3.2 Monthly basis hourly surface wind speed data at Batu Embun in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 0.42 0.21 0.16 0.58 0.56 0.38 0.48 0.46 0.43 0.37 0.4 0.26 0.39
2 0.42 0.21 0.23 0.52 0.45 0.43 0.44 0.47 0.34 0.4 0.44 0.4 0.4
3 0.42 0.18 0.39 0.43 0.31 0.34 0.39 0.43 0.36 0.46 0.29 0.41 0.37
4 0.22 0.19 0.2 0.57 0.32 0.32 0.26 0.32 0.29 0.4 0.33 0.42 0.32
5 0.38 0.21 0.28 0.42 0.31 0.4 0.27 0.27 0.22 0.44 0.44 0.37 0.34
6 0.29 0.18 0.23 0.39 0.35 0.4 0.29 0.17 0.36 0.39 0.43 0.36 0.32
7 0.31 0.22 0.26 0.45 0.26 0.42 0.25 0.26 0.22 0.4 0.4 0.46 0.33
8 0.27 0.28 0.39 0.6 0.37 0.44 0.31 0.47 0.37 0.56 0.5 0.53 0.42
9 0.95 0.99 0.85 1.25 0.85 0.81 0.78 1.1 0.9 1.12 0.95 1.03 0.96
10 1.41 1.48 1.25 1.71 1.39 1.38 1.25 1.58 1.29 1.43 1.32 1.74 1.43
11 1.74 1.84 1.63 1.79 1.72 1.67 1.58 1.76 1.64 1.75 1.54 1.84 1.71
12 1.83 2.05 1.44 1.9 1.73 1.83 1.93 2.14 1.95 1.71 1.69 1.88 1.84
13 1.73 2 1.78 1.61 1.68 1.79 1.91 1.99 1.94 1.71 1.75 1.92 1.82
14 1.73 1.93 1.53 1.65 1.86 1.81 2 2.08 2.03 1.59 1.47 1.67 1.78
15 1.69 1.93 1.52 1.76 1.84 1.94 2.13 1.78 1.86 1.51 1.39 1.69 1.75
16 1.56 1.58 1.7 1.52 1.66 1.64 1.95 1.72 1.74 1.38 1.33 1.34 1.59
17 1.44 1.47 1.39 1.37 1.37 1.69 1.72 1.68 1.76 1.21 1.26 1.17 1.46
18 1.2 1.14 1.02 1.36 1.26 1.35 1.25 1.38 1.32 0.99 1.01 1.23 1.21
19 0.78 0.77 1.02 0.86 0.61 0.89 0.91 0.82 0.83 0.8 0.61 0.68 0.8
20 0.42 0.56 0.71 0.76 0.48 0.57 0.74 0.7 0.61 0.93 0.63 0.63 0.64
21 0.5 0.59 0.61 0.61 0.71 0.51 0.47 0.51 0.72 0.91 0.57 0.43 0.6
22 0.45 0.47 0.52 0.74 0.72 0.47 0.57 0.57 0.5 0.58 0.45 0.19 0.52
23 0.49 0.19 0.39 0.68 0.7 0.47 0.39 0.51 0.42 0.5 0.42 0.23 0.45
24 0.37 0.26 0.27 0.64 0.56 0.5 0.48 0.58 0.38 0.43 0.38 0.24 0.43
Monthly
Mean 0.88 0.87 0.82 1.01 0.92 0.94 0.95 0.99 0.94 0.92 0.83 0.88
Table 3.3 Monthly basis hourly surface wind speed data at Batu Embun in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 0.13 0.21 0.56 0.33 0.33 0.46 0.22 0.37 0.48 0.5 0.51 0.29 0.37
2 0.35 0.13 0.36 0.43 0.28 0.38 0.35 0.27 0.28 0.45 0.42 0.39 0.34
3 0.27 0.17 0.42 0.37 0.27 0.36 0.26 0.18 0.38 0.38 0.4 0.39 0.32
4 0.32 0.13 0.28 0.24 0.17 0.26 0.26 0.25 0.18 0.46 0.45 0.48 0.29
5 0.3 0.28 0.38 0.34 0.29 0.26 0.22 0.22 0.39 0.47 0.48 0.43 0.34
6 0.3 0.22 0.4 0.31 0.22 0.26 0.13 0.07 0.24 0.44 0.49 0.48 0.30
29
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
7 0.26 0.03 0.29 0.28 0.48 0.45 0.23 0.14 0.29 0.39 0.38 0.49 0.31
8 0.24 0.11 0.47 0.46 0.59 0.5 0.41 0.34 0.41 0.51 0.59 0.66 0.44
9 0.85 0.67 0.91 1.08 1.05 1.00 0.82 0.85 0.98 0.96 1.09 1.00 0.94
10 1.44 1.31 1.41 1.64 1.35 1.39 1.17 1.38 1.47 1.56 1.41 1.33 1.41
11 1.82 1.70 1.69 1.66 1.57 1.55 1.59 1.57 1.81 1.77 1.75 1.71 1.68
12 1.79 1.86 1.77 1.84 1.71 1.86 1.72 1.65 1.84 1.87 1.77 1.78 1.79
13 1.94 1.83 1.89 1.68 1.59 1.8 2.05 1.8 2.02 1.79 1.72 1.82 1.83
14 1.85 1.8 1.86 1.57 1.55 1.75 2.04 1.87 1.79 1.57 1.74 1.79 1.77
15 1.71 1.79 1.62 1.58 1.64 1.65 1.83 1.69 1.74 1.63 1.55 1.62 1.67
16 1.68 1.59 1.88 1.83 1.47 1.62 1.73 1.76 1.64 1.36 1.54 1.64 1.65
17 1.44 1.22 1.96 1.55 1.48 1.5 1.47 1.5 1.61 1.26 1.63 1.39 1.50
18 1.17 1.29 1.36 1.24 1.32 1.04 1.08 1.25 1.3 1.22 0.85 0.98 1.18
19 0.67 0.74 1.07 0.68 0.83 0.48 0.61 0.81 1.07 1.09 0.64 0.67 0.79
20 0.51 0.56 0.75 0.84 0.76 0.63 0.61 0.82 0.76 0.71 0.51 0.46 0.66
21 0.46 0.71 0.82 0.83 0.71 0.69 0.43 0.95 0.67 0.73 0.53 0.38 0.66
22 0.46 0.71 0.74 0.48 0.67 0.59 0.39 0.61 0.54 0.58 0.6 0.35 0.56
23 0.25 0.61 0.52 0.36 0.61 0.46 0.43 0.37 0.37 0.77 0.41 0.3 0.45
24 0.32 0.49 0.4 0.38 0.43 0.72 0.36 0.41 0.26 0.69 0.37 0.38 0.43
Monthly
Mean 0.86 0.84 0.99 0.92 0.89 0.9 0.85 0.88 0.94 0.97 0.91 0.88
Table 3.4 Monthly basis hourly surface wind speed data at Butterworth in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 1.74 2.4 1.33 2.3 1.39 1.48 1.06 1.53 1.05 1.97 1.77 1.78 1.65
2 1.69 2.63 1.49 1.73 1.21 1.5 1.2 1.44 1.94 1.9 1.67 1.98 1.7
3 1.91 2.3 1.38 1.8 1.69 1.27 1.46 1.67 1.72 1.98 1.61 1.88 1.72
4 1.72 2.07 1.47 1.77 1.58 1.12 1.56 1.92 2.11 2.22 1.53 1.61 1.72
5 1.5 2.08 1.24 1.61 1.74 1.19 1.43 1.86 2.06 2.13 1.64 1.57 1.67
6 1.42 2.12 1.35 1.76 2.16 1.47 1.21 1.95 1.75 1.9 1.58 1.74 1.7
7 1.31 1.93 1.54 1.49 1.51 1.26 1 1.72 1.71 1.62 1.4 1.83 1.53
8 1.3 1.63 1.3 1.61 1.74 1.86 1.32 1.89 2.15 2.37 1.91 2.14 1.77
9 2.02 2.36 2.49 2.35 2.35 2.22 2.17 2.35 2.49 2.62 2.46 3.13 2.42
10 3.03 3.47 2.77 2.51 2.41 2.12 2.16 2.71 2.64 2.43 2.7 3.19 2.68
11 2.97 3.47 2.43 2.53 2.57 2.52 3.5 3.19 2.9 2.3 2.78 3.14 2.86
12 3.1 3.6 2.65 2.98 3.34 3.54 4.59 4.13 3.4 3.08 3.11 4.03 3.46
30
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
13 3.99 3.94 3.74 3.92 3.89 4.17 4.65 4.85 3.75 3.91 3.76 4.54 4.09
14 4.55 4.76 4.55 4.72 4.69 4.65 4.89 5.05 4.57 4.46 4.45 5.27 4.72
15 5.25 5.15 5.23 4.88 4.99 4.43 5.21 5.34 4.85 4.78 4.64 5.44 5.02
16 5.66 5.37 4.8 4.63 4.76 4.29 4.8 5.3 4.03 4.69 4.66 5.46 4.87
17 4.95 5.36 4.44 4.65 4.74 4.12 5.05 5 4.2 4.55 4.32 5.05 4.7
18 4.53 4.22 3.74 4.1 4.17 3.41 4.52 4.56 3.98 4.3 4.14 4.37 4.17
19 3.52 4.16 3.05 3.52 3.44 2.91 3.75 3.79 3.29 3.25 3.42 4.07 3.51
20 3.29 3.51 3.01 2.83 2.76 2.81 2.86 3.31 2.97 2.78 3.22 4.28 3.14
21 3.74 3.17 2.52 2.8 2.5 2.47 2.39 2.69 2.57 2.63 2.65 3.37 2.79
22 2.59 2.71 2.34 2.77 2.34 1.52 2.15 2.05 2.1 2.37 2.67 3.12 2.39
23 2.16 3.04 1.62 2.48 1.77 1.41 2.08 1.85 1.62 2.43 2.52 3.14 2.18
24 2.22 2.21 1.46 2.01 1.6 1.5 1.74 1.78 1.71 1.97 2.38 2.83 1.95
Monthly
Mean 2.92 3.24 2.58 2.82 2.72 2.47 2.78 3 2.73 2.86 2.79 3.29
3.2.5 Analysis procedure
3.2.5(a) Wind speed distribution parameters
In order to assess the wind energy potentiality of a particular area and hence the
economical viability of a particular area, it is very much necessary to know the wind
speed distribution over a period of time. The wind speed distribution predominantly
determines the performance of wind power systems. From the literature, it is observed
that different wind speed distribution models (such as the Weibull, the Rayleigh and the
Lognormal) are used to fit the wind speed distributions over a period of time. Among
them, the 2-parameter Weibull function is accepted as the best all over the world. It is
because the Weibull distribution function has its merits in wind resource assessment due
to great flexibility and simplicity, but particularly it has been found to fit a wide
collection of recorded wind speed data. This statistical tool also indicates how often
winds of different speeds will be seen at a location with a certain average (mean) wind
speed and knowing this one can easily choose a wind turbine with the optimal cut-in
speed (the wind speed at which the turbine starts to generate usable power), and cut-out
31
speed (the speed at which the turbine hits the limit of its alternator and can no longer put
out increased power output with further increases in wind speed) (Celik, 2003; Weisser,
2003a; Zhou, 2008). Weibull distribution model has been chosen for the assessment of
wind energy potentiality in this paper. However, it has limitations as well. The main
limitation of the Weibull distribution function is that it is unable to represent the
probabilities of observing zero or very low wind speeds. However, for the purpose of
estimating wind energy potentiality for the commercial use of wind turbines, it is
worthless as the energies available at low speeds are very negligible (Persaud et al.,
1999; Weisser, 2003a).
3.2.5(b) Weibull distribution function
The wind speed data obtained, with various observation methods, has usually wide
ranges and could not be taken as sufficient for obtaining a clear view of the available
wind potential. Therefore, it is necessary to have only a few key parameters that can
explain the behavior of the wide range of wind speed data. In order to minimize the
required time and expenses for processing long-term, usually hourly, wind speed data, it
is preferred to describe the wind speed variations using statistical functions. The 2-
parameter Weibull function can be used for this purpose as one can adjust the
parameters to suit a period of time, usually one month or one year and can use widely
both in wind speed and wind energy analysis (Gökçek et al., 2007; Kenisarin et al.,
2006). In Weibull distribution, the variation in wind velocity is characterized by two
parameter functions, the probability density function and the cumulative distribution
function.
The wind speed probability distribution function indicates the fraction of time for which
a wind speed possibly prevails at the area under investigation. The wind speed
32
probability density function can be calculated by the following equation (Ahmed, 2010;
Fyrippis et al., 2010):
)2.3(exp))(( 1
k
k
c
v
c
v
c
kvf
Another important aspect should be considered during the statistical analysis is the
prediction of the time for which an installed turbine could be potentially functional in
this area. In order to achieve this, the determination of the cumulative distribution
function is required. Since the cumulative distribution function of the velocity v
indicates the fraction of time the wind speed is equal or lower than the speed v, by
taking the difference of its values it is possible to estimate the functional time of the
wind turbine. Therefore, the cumulative distribution is the integral of the probability
density function and can be expressed as (Akpinar & Akpinar, 2005):
)3.3(1 /k
cvevF
For the analysis of a wind regime using the Weibull distribution, the Weibull parameters
k and c must be calculated. Under the Weibull distribution, the major factor determining
the uniformity of wind is the shape factor k. Uniformity of wind at the site increased
with k. For example, with k=1.5, the wind velocity is between 0 and 20 m/s for 95
percent of the time. Whereas, when k=4, the velocity is more evenly distributed within a
smaller range of 0 to 13 m/s for 95 percent of the time. In the first case, the most
frequent wind speed is 5 m/s, which is expected for 7.6 percent of the total time. The
most frequent wind speed of 9 m/s would prevail for 15.5 percent of the time in the
second case. Some of the methods used for determining k and c are:
1. Weibull probability plotting method
2. Moment method
3. Energy pattern factor method
33
4. Standard deviation method
5. Maximum likelihood method
Though all the above mentioned methods are widely used, in this study Standard
deviation method has been used. In this method, by calculating the mean wind speed v ,
and the variance σ of the known wind speed data, the following approximation can be
used to calculate the Weibull parameters c and k:
)4.3(1
1
n
i
ivn
v
)5.3()(1
12/1
1
2
n
i
i vvn
)6.3()101(
086.1
kv
k
)7.3()/11( k
vc
Where, Г is the gamma function and using the Stirling approximation the gamma
function of (x) can be given as follows:
0
1 )8.3(duuex xu
Higher values of c indicate that the wind speed for that particular month is higher than
that of the other months. In addition, the values of k indicate wind stability (Sopian et
al., 1995)
3.2.5(c) Most probable wind speed
The most probable wind speed denotes the most frequent wind speed for a given wind
probability distribution. From the scale parameter and shape parameter of Weibull
34
distribution function, the most probable wind speed can be easily obtained from the
following equation (Keyhani et al., 2010).
)9.3(1
1
1
k
mpk
cV
3.2.5(d) Maximum energy carrying by the wind speed
The maximum wind energy carrying by the wind speed can be calculated from the scale
parameter and shape parameter of Weibull distribution function. The wind speed
carrying maximum wind energy can be expressed as follows (Jamil et al., 1995):
)10.3(2
1
1
.max
k
Ek
cV
3.2.5(e) Wind power density
The power of the wind that flows at a speed (v) through a blade sweep area (A) can be
expressed by the following equations (Pimenta et al., 2008):
)11.3(2
1)( 3vvP
Besides, calculation of wind power density based on the wind speed provided by field
measurements can be developed by Weibull distribution analysis using the following
equation (Keyhani et al., 2010):
)12.3(3
2
1)(
2
1 3
0
3
k
kcdvvfv
A
P
Where, ρ is the standard air density, found to 1.225 kg/m3 at sea level with mean
temperature of 15˚C and 1 atmospheric pressure which, depends on altitude, air pressure
and temperature. For wind power estimation, it is assumed that the air density is not
correlated with wind speed. By this assumption, the error may occur on a constant
35
pressure surface is less than 5%. It is also seen from the above equation that wind power
density increases with the cube of the wind speed (Alboyaci & Dursun, 2008).
3.2.5(f) Wind energy density
Energy is defined as the ability to do work or the amount of work actually performed.
By knowing the wind power density as shown in Equation (3.12), wind energy density
can be estimated by the following equation for the desired time, T (Keyhani et al.,
2010):
)13.3(3
2
1 3 Tk
kc
A
E
Equation (3.13) can be used to calculate the available wind energy for any specific
period when the wind speed frequency distributions are different.
3.2.5(g) Wind rose plot
WRPLOT Software: WRPLOT View is a fully operational wind rose program for the
meteorological data. It provides visual wind rose plots, frequency analysis, and plots for
several meteorological data formats. A wind rose depicts the frequency of occurrence of
winds in each of the specified wind directional sectors, and wind speed classes for a
given location and time period.
The wind rose is the time-honored method of graphically presenting the wind
conditions, direction and speed, over a period of time at a specific location. To create a
wind rose, average wind direction and wind speed values are logged at a site, at short
intervals, over a period of time, e.g. one week, one month, or longer. The collected wind
data is then sorted by wind direction so that the percentage of time that the wind was
blowing from each direction can be determined. Typically, the wind direction data is
sorted into twelve equal arc segments, 30° each segment, in preparation for plotting a
36
circular graph in which the radius of each of the twelve segments represents the
percentage of time that the wind blew from each of the twelve 30° direction segments.
Wind speed data can be superimposed on each direction segment to indicate, for
example, the average wind speed when the wind was blowing from that segment's
direction and the maximum wind speed during the logging period. The information
provided by the wind rose can be applied to many and varied situations. Wind power
"farms" do extensive wind rose type studies prior to erecting their wind turbines. Thus,
the wind rose is a simple information display technique that has a multitude of uses.
3.3 Contour Mapping of wind energy
To make a reliable contour map of wind energy, especially for specific location with a
difficult topography and insufficient meteorological information like Malaysia, we have
to follow three very important steps: data collection, interpolation and extrapolation of
the data using a suitable interpolation method to visualize the result and statistical
analysis. The first one, data collection, has been discussed in section 3.2.2 and the rest
two steps are discussed hereafter.
3.3.1 Interpolation and extrapolation of data
As the wind speed data has been collected from the 15 meteorological stations of
Peninsular Malaysia, to make a good contour map with high resolution, an interpolation
or extrapolation is needed to make a contour map. The interpolation and extrapolation
are a process in mathematics used to find the value of a function outside its tabulated
values. Interpolation is the process of obtaining a value from a graph or table
that is located between major points given, or between data points plotted. A
ratio process is usually used to obtain the value. Extrapolation is the process of
obtaining a value from a chart or graph that extends beyond the given data. The
37
"trend" of the data is extended past the last point given and an estimate made of the
value.
To make a good interpolation and/or extrapolation for specific data, it is very important
to note which interpolation and/or extrapolation method is suitable and, which leading
program has to be used. In this study, the Geographic Information system (GIS) has
been chosen for contour mapping of wind energy for Peninsular Malaysia. A
Geographic Information System (GIS) integrates hardware, software, and data to
capture, store, analyze, manage, and display various forms of geographically referenced
information. Today‟s GIS involves collaboration of various technologies and discipline
like geography, cartography, surveying, remote sensing, satellite imagery,
photogrammetry, spatial statistics, mathematics, geometry, topology, computer science,
information science, library science, web-technology, etc. Among the GISs ArcGIS 9.3
has been used for this study. ArcGIS 9.3 is the special type of software that is very
useful for data interpolation and/or extrapolation. The built-in toolbox, such as IDW,
Kriging, Spline, PointInterp, Natural Neighbor and trend method, for different
interpolation and extrapolation techniques, can be used for the surface representation.
Each toolbox is useful for a specific situation where it is depended on reference data
(elevation, temperature distribution, human density…etc.) and type of the surface
produced (Childs, 2011). In the present work, the spline toolbox has been used as an
interpolation and extrapolation method. In this method, a mathematical function is used
to estimate different values. It minimizes the overall surface curvature, and this will
give a smooth surface that will pass exactly through the input points.
3.3.2 Data Analysis
For this study, 15 meteorological stations all over the Peninsular Malaysia have been
chosen based on evenly distribution. From these 15 stations, total 30 years (each station
38
two years) hourly mean surface wind speed data have been collected. From these hourly
mean wind speed data, the daily mean speed data have been calculated, which are
shown in Tables 3.2 to 3.31. The wind speed data which are collected by MMD from 10
m height from ground has been converted to 100 m height from the ground. These
converted hourly wind speed data have been averaged to daily, monthly and yearly
mean wind speed data and after that used to make the contour map of Peninsular
Malaysia.
39
Figure 3.1 Location of the selected Meteorological Stations in Peninsular Malaysia
40
CHAPTER 4: RESULTS AND DISCUSSIONS
4.1 Introduction
The results and discussions section gives the details result of the assessment of the wind
energy potential and contour mapping in the peninsular Malaysia. The assessment
section has been divided into small subdivisions like variations of the diurnal wind
speed, monthly wind speed, standard deviations, shape factor and scale factor, Weibull
distribution function, cumulative distribution function and wind rose plot. On these sub-
divisions, point-by-point discussion has been given. At the end results and discussions
on the contour mapping has been given.
4.2 Assessment of wind energy potentiality
To understand the weather behavior well, an adequate source of measuring weather data
is very much essential. The relationship between the climatic data and energy
performance of wind machines rely heavily on both the quality and quantity of the
meteorological observations. Though it is believed that wind data of shorter periods,
less than 30 years, may inherit variations from the long term average but most of the
developing countries do not possess accurate long term data. As a result, information of
shorter recording periods has to be used to suffice for resource assessment (Kainkwa,
2000; Lun & Lam, 2000; Weisser, 2003a).
The determination of the wind potential of the selected sites was made by analyzing the
wind characteristics in details, such as the mean wind speed, the prevailing direction,
their duration and availability, as well as, the resulting power density. The 10 m height
wind speed data has been converted to 100 m height wind speed data by using Equation
41
(3.1) and then the converted data have been used for assessing the potentiality of wind
energy in Peninsular Malaysia.
4.2.1 Diurnal wind speed variations
The expansion of electricity capacities or application of Wind Energy Conversion
technologies (WECTs) in small isolated power systems requires not only the monthly or
seasonal probability distribution of wind velocities but also needs to assess at least
hourly probabilities of wind speeds. Considering distributions that are solely based on
daily mean wind speed neglect the significant variations of wind velocity throughout
any given day. In particular, as load duration curves of electricity demand vary
significantly throughout the day. The diurnal mean wind speed variations of the 15
selected stations are illustrated in Figures 4.1 to 4.15 for a period of two years for each
station and evaluated by Equation (3.4).
It is found that the values of the hourly mean wind speed ranges are between 0.32 m/s to
5.67 m/s. The bell shaped trend of wind speed variations can be found at Batu Embun,
Bayan Lepas, Butterworth, Chuping, Kuantan, Malacca and Senai, though, their size,
shape and peak of the bell shape are a little bit different. It is found that the daytime,
from 8 am to 6 pm, is windy for all the years round, while the nighttime is relatively
calm. The hourly mean wind speed is gradually increasing from 6 am until 3 pm, and
then it is decreasing for these places for all the years until 11 pm. The remaining time
from 11 pm to 8 am, the wind speed variations remain almost constant, which indicates
that the nighttime of these eras is stable in comparing to the daytime. From this trend, it
can be concluded that the energy demands and characteristics of the wind speed are
coincident as the energy demand in the daytime is greater than at nighttime.
However, the trend of wind speed variations is slightly different for the other study
places. At Cameron Highland, wind speed start increasing from 9 am until 12 pm then it
42
is decreasing up to 6 pm. It is found that from 6 pm to 9 am, the wind speed variations
remain almost constant. The main reason behind this slightly different wind profile is its
topographical distinction to the other sites. As it is mentioned at section 3.2.2, Cameron
Highland is situated at 1545 m above the sea level. It is generally spoken that wind
speeds tend to be higher in the highlands, but topographical features can aggravate
winds and cause strong gusts in lowland areas (Mortensen & Petersen, 1997;
Wikepedia, 2011). At KLIA Sepang, Kota Bharu, Kuala Terengganu and Sitiawan, the
wind speed is gradually increasing from 6 am to 3 pm then decreasing. Except Ipoh,
where highest average wind speed is shown at 9 am and 3 pm, at all the stations the
highest average wind speeds are observed at 3 pm for the study period.
Figure 4.1 Diurnal variation of wind speed at Batu Embun.
Figure 4.2 Diurnal variation of wind speed at Bayan Lepas.
0
1
2
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
0
1
2
3
4
5
6
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
43
Figure 4.3 Diurnal variation of wind speed at Butterworth
Figure 4.4 Diurnal variation of wind speed at Cameron Highland
Figure 4.5 Diurnal variation of wind speed at Chuping
0
1
2
3
4
5
6
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
0
1
2
3
4
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
0
1
2
3
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
44
Figure 4.6 Diurnal variation of wind speed at Ipoh
Figure 4.7 Diurnal variation of wind speed at KLIA Sepang
Figure 4.8 Diurnal variation of wind speed at Kota Bharu
0
1
2
3
4
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
0
1
2
3
4
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
0
1
2
3
4
5
6
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
45
Figure 4.9 Diurnal variation of wind speed at Kuala Krai
Figure 4.10 Diurnal variation of wind speed at Kuala Terengganu
Figure 4.11 Diurnal variation of wind speed at Kuantan
0
1
2
3
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
0
1
2
3
4
5
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
0
1
2
3
4
5
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
46
Figure 4.12 Diurnal variation of wind speed at Malacca
Figure 4.13 Diurnal variation of wind speed at Mersing
Figure 4.14 Diurnal variation of wind speed at Senai
0
1
2
3
4
5
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
0
1
2
3
4
5
6
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
0
1
2
3
4
5
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
47
Figure 4.15 Diurnal variation of wind speed at Sitiawan
4.2.2 Monthly and yearly mean wind speed variations
The monthly mean wind speed variation has been determined by the Equation (3.4) as
shown in Figures 4.16 to 4.30. The trends of the monthly mean wind speed for the study
sites can be divided into two groups. First the wind speed variations for Bayan Lepas,
Cameron Highland, Chuping, Kota Bharu, Kuala Terengganu, Kuantan, Malacca,
Mersing and Senai for all years are quite similar. For all the study years and stations, it
is found that the month of December to March is windier than that of the remaining
months in a year. This is because, may be due to the northeast monsoon season on
December to March, steady easterly or northeasterly strong winds prevail and the strong
surges of cold air from the north (cold surges) occur in these areas. Second, the wind
speed variations of Batu Embun, Butterworth, Ipoh, KLIA Sepang, Kuala Krai, and
Sitiawan are also quite similar. In these areas, whole years, there is no any significant
change in the wind speed variations.
Most of the monthly mean wind speed values are between 1.5 m/s to 4.5 m/s, but some
are over 4.5 m/s and few are under 1.5 m/s. While January 2009 at Mersing shown the
highest mean wind speed value with 6.62 m/s, May 2009 at Chuping shown the
minimum wind speed value with 0.81 m/s. The yearly mean wind speeds can be
0
1
2
3
4
5
0 3 6 9 12 15 18 21
Mea
n w
ind
sp
eed
(m
/s)
Hours of Day
2008 2009
48
obtained by averaging all the available monthly mean wind speed in a year for all the
sites. The average wind speed values for each year for all the sites are listed in Table
4.3. From the result, it can be shown that mean wind speeds for all the years are lower
than 4.5 m/s and the range of the yearly mean wind speed values from 0.90 to 4.06 m/s.
Whether constructing a wind turbine is economically viable depends most strongly on
the quality of the wind resource. Generally annual wind speeds of at least 4.0-4.5 m/s
are needed for a small wind turbine to produce enough electricity to be cost effective
(Clarke, 2011). In the study period, it is found that the yearly mean wind speed at
Mersing is 4.06 m/s in 2008 and 4.01 m/s in 2009, which is capable of producing
commercial wind energy by using the current technology. At the current technology,
some horizontal axis wind turbine ( i.e. Evance R9000) can generate electricity at the
wind speed 3 m/s, and some vertical axis wind turbine can produce the electricity at the
wind speed 2.3 m/s (GLT, 2010). If we consider the vertical axis wind turbine for
producing electricity then it is found that the sites Bayan Lepas, Butterworth, Cameron
Highlands, Kota Bharu, Kuala Terengganu and Malacca are also suitable for small-scale
electricity generation. Small-scale (5 to 15 kilowatts) wind turbines can be used in
domestic, community and small wind energy projects, and these can be either stand–
alone or grid-connected systems. Stand-alone systems are used to generate electricity
for charging batteries to run small electrical applications, often in remote locations
where it is expensive or not physically possible to connect to a mains power supply.
Recently, the Government of Malaysia is making lot of colonies outside the main town
for the future generation. So this type of small-scale wind can be used to supply
electricity to the remote colonies.
But according to the Pacific Northwest National Laboratory (PNNL) classification
system, most wind turbines start generating electricity at wind speeds of around 3-4 m/s
(eight mph); generate maximum „rated‟ power at around 15 m/s (30 mph); and shut
49
down to prevent storm damage at 25 m/s or above (50 mph or above). Most of the
stations fall outside of the category if based on the yearly mean wind speed. This means
that under the current wind turbine technology, the Peninsular Malaysia may not be
suitable for year round large-scale electricity generation due to the cost factor. However,
for small scale applications, and in the long run with the development of wind turbine
technology, the utilization of wind energy, especially at Mersing is still promising.
Figure 4.16 Monthly mean wind speed at Batu Embun
Figure 4.17 Monthly mean wind speed at Bayan Lepas
0
1
2
Mea
n w
ind
sp
eed
(m
/s)
Months
2008 2009
0
1
2
3
4
5
Mea
n W
ind
Sp
eed
(m
/s)
Months
2008 2009
50
Figure 4.18 Monthly mean wind speed at Butterworth
Figure 4.19 Monthly mean wind speed at Cameron Highland
Figure 4.20 Monthly mean wind speed at Chuping
0
1
2
3
4
Mea
n W
ind
Sp
eed
(m
/s)
Months
2008 2009
0
1
2
3
4
Mea
n W
ind
Sp
eed
(m
/s)
Months
2008 2009
0
1
2
3
Mea
n W
ind
Sp
eed
(m
/s)
Months
2008 2009
51
Figure 4.21 Monthly mean wind speed at Ipoh
Figure 4.22 Monthly mean wind speed at KLIA Sepang
Figure 4.23 Monthly mean wind speed at Kota Bharu
0
1
2
3
Mea
n W
ind
Sp
eed
(m
/s)
Months
2008 2009
0
1
2
3
4
Mea
n W
ind
Sp
eed
(m
/s)
Months
2008 2009
0
1
2
3
4
5
Mea
n W
ind
Sp
eed
(m
/s)
Months
2008 2009
52
Figure 4.24 Monthly mean wind speed at Kuala Krai
Figure 4.25 Monthly mean wind speed at Kuala Terengganu
Figure 4.26 Monthly mean wind speed at Kuantan
0
1
2
Mea
n w
ind
sp
eed
(m
/s)
Months
2008 2009
0
1
2
3
4
Mea
n W
ind
Sp
eed
(m
/s)
Months
2008 2009
0
1
2
3
4
Mea
n W
ind
Sp
eed
(m
/s)
Months
2008 2009
53
Figure 4.27 Monthly mean wind speed at Malacca
Figure 4.28 Monthly mean wind speed at Mersing
Figure 4.29 Monthly mean wind speed at Senai
0
1
2
3
4
5
6
Mea
n W
ind
Sp
eed
(m
/s)
Months
2008 2009
0
1
2
3
4
5
6
7
Mea
n w
ind
sp
eed
(m
/s)
Months
2008 2009
0
1
2
3
4
Mea
n W
ind
Sp
eed
(m
/s)
Months
2008 2009
54
Figure 4.30 Monthly mean wind speed at Sitiawan
4.2.3 Variations of standard deviation, shape factor (k) and scale factor (c)
It is a matter of common observation that the wind is not steady all time. In order to
calculate the mean power delivered by a wind turbine from its power curve, it is
necessary to know the probability density distribution of the wind speed. The basic
measure of the unsteadiness of the wind is the standard deviation (or root mean square)
of the speed variations. A low standard deviation indicates that the data points tend to be
very close to the mean, whereas the high standard deviation indicates that the data are
spread out over a large range of values. The monthly and yearly standard deviation has
been recorded in Table 4.1 to 4.3, which are calculated by using the Equation (3.5). By
analyzing the 360 months of 15 sites, the monthly standard deviation can be found in
the range of 0.57 m/s to 2.68 m/s, whereas, the yearly standard deviation range is found
to be between 0.81 m/s to 2.09 m/s. From this result, it is found that the yearly standard
deviation range is less than that of the monthly standard deviation which is a good sign
for the generating wind power.
In order to fit wind speed data to the Weibull distribution function, we need a value for
the shape factor k. This is often obtained by some form of fitting procedure to the
measured probability distribution but this is unnecessarily complicated. One of the
0
1
2
Mea
n W
ind
Sp
eed
(m
/s)
Months
2008 2009
55
simplest ways of measuring shape factor k is to use standard deviation or root mean
square of the variable (σ). As the average wind speed at a given location is a function of
climate and terrain. There can be significant seasonal variations in wind speed. In
general, the shape factor is more of less constant throughout the year, but there can be a
large change in the scale factor and the average wind speed. The monthly and yearly
values of the two Weibull parameters, the shape factor k (dimensionless) and the scale
factor c (m/s) have been calculated by using Equations (3.6), (3.7) and (3.8) are shown
in Table 4.1 to 4.3. It is obvious that the parameter k has a much smaller, temporal
variation than the parameter c. The monthly values of k range between 0.73 and 3.81,
with an average value of 1.55, whereas the yearly values of k range between 1 and 2.21
with the average value of 1.44. The lowest value of the scale parameter c is 0.69 m/s
and is found in year 2009 at Chuping, while the highest value is 7.36 m/s, which
occurred in the year 2009 at Mersing. Its average value is 2.54 m/s for the study period.
Table 4.1 Monthly standard deviation and weibull parameters (k, c)
Mo
nth
Para
mete
r
Batu Embun Bayan Lepas Butterworth Cameron
Highlands
Chuping Ipoh KLIA
Sepang
Kota Bharu
200
8
200
9
200
8
200
9
200
8
200
9
200
8
200
9
200
8
200
9
200
8
200
9
200
8
200
9
200
8
200
9
Jan v 0.99 0.86 3.09 4.23 2.92 3.34 2.97 3.31 2.33 2.79 2.18 2.39 2.67 2.86 3.59 3.37
σ 0.80 0.87 1.92 2.34 1.89 2.06 1.83 1.97 0.88 0.88 1.42 1.77 1.69 2.47 2.37 2.35
k 1.26 0.99 1.68 1.90 1.60 1.69 1.69 1.76 2.88 3.50 1.59 1.39 1.64 1.17 1.57 1.48
c 1.06 0.86 3.46 4.77 3.25 3.74 3.33 3.72 2.61 3.10 2.43 2.62 2.98 3.01 4.03 3.74
Fab v 0.87 0.84 3.23 2.87 3.24 2.98 3.45 2.29 2.44 2.33 2.64 2.06 2.88 1.92 4.39 3.01
σ 0.85 0.85 2.02 2.14 1.77 2.00 1.83 1.36 0.92 1.13 1.50 1.52 1.76 1.40 2.55 2.06
k 1.03 0.99 1.66 1.38 1.93 1.54 1.99 1.76 2.88 2.19 1.85 1.39 1.71 1.41 1.80 1.51
c 0.88 0.84 3.61 3.15 3.65 3.31 3.89 2.57 2.74 2.63 2.97 2.26 3.24 2.11 4.99 3.34
Mar
v 0.82 0.99 2.72 2.59 2.58 2.89 3.69 2.43 1.98 1.36 2.00 2.28 2.47 1.90 4.71 2.44
σ 0.79 0.88 1.97 2.00 1.77 2.00 1.98 1.74 1.32 1.06 1.43 1.70 1.65 1.39 2.39 2.02
k 1.06 1.14 1.42 1.32 1.51 1.49 1.97 1.44 1.55 1.31 1.44 1.38 1.55 1.40 2.09 1.23
c 0.84 1.04 2.99 2.81 2.87 3.21 4.16 2.70 2.20 1.48 2.22 2.55 2.74 2.10 5.32 2.62
Apr v 1.01 0.92 2.61 2.41 2.82 2.78 2.18 3.00 1.28 1.20 2.30 2.40 2.18 2.05 3.07 2.73
σ 0.82 0.81 1.91 1.96 1.68 1.86 1.34 1.99 1.04 1.21 1.30 1.55 1.23 1.65 1.69 1.79
k 1.25 1.15 1.40 1.25 1.76 1.55 1.70 2.56 1.25 0.99 1.86 1.61 1.86 1.27 1.91 1.58
c 1.08 0.97 2.87 2.59 3.17 3.09 2.44 3.34 1.38 1.20 2.59 2.68 2.45 2.20 3.46 3.04
Ma
y v 0.92 0.89 2.14 2.09 2.72 2.71 2.14 2.67 1.06 0.81 2.18 2.34 2.18 2.17 2.33 2.84
σ 0.79 0.80 1.95 1.76 1.65 1.87 1.29 1.93 1.18 1.06 1.35 1.37 1.33 1.51 1.83 1.53
k 1.18 1.12 1.11 1.21 1.72 1.50 1.73 1.42 0.89 0.75 1.68 1.79 1.71 1.48 1.30 1.96
c 0.97 0.93 2.22 2.22 3.06 3.01 2.40 2.94 1.00 0.69 2.45 2.63 2.45 2.38 2.53 3.21
Jun v 0.94 0.90 2.20 2.19 2.47 2.67 2.26 2.08 1.00 0.90 1.95 2.19 2.41 1.68 2.67 2.49
σ 0.84 0.80 2.08 2.00 1.80 1.64 1.50 1.65 1.09 1.21 1.44 1.28 1.32 1.39 1.56 1.38
k 1.13 1.14 1.06 1.10 1.41 1.70 1.56 1.29 0.91 0.73 1.39 1.79 1.92 1.23 1.79 1.90
c 0.98 0.94 2.25 2.27 2.72 3.00 2.52 2.25 0.96 0.74 2.14 2.46 2.72 1.81 3.00 2.81
Jul v 0.95 0.85 2.72 2.61 2.78 2.80 1.80 2.22 1.04 0.95 2.33 2.22 2.73 2.43 2.86 2.80
σ 0.89 0.89 2.43 2.26 2.00 1.88 1.30 1.58 1.21 1.16 1.45 1.46 1.51 1.59 1.58 1.68
56
Month
Paramete
r
Batu Embun Bayan Lepas Butterworth Cameron Highlands
Chuping Ipoh KLIA Sepang
Kota Bharu
k 1.07 0.95 1.13 1.17 1.43 1.54 1.42 1.45 0.85 0.81 1.67 1.58 1.90 1.59 1.90 1.74
c 0.98 0.83 2.85 2.76 3.06 3.11 1.98 2.47 0.96 0.85 2.61 2.47 3.08 2.73 3.22 3.15
Aug
v 0.99 0.88 2.57 2.34 3.00 2.96 1.79 2.91 1.06 1.27 2.50 2.40 2.73 2.17 2.98 2.76
σ 0.88 0.85 2.41 1.79 1.82 1.80 1.24 1.92 1.21 1.35 1.51 1.47 1.61 1.50 1.58 1.74
k 1.14 1.04 1.07 1.34 1.72 1.72 1.49 1.57 0.87 0.94 1.73 1.70 1.77 1.49 1.99 1.65
c 1.04 0.90 2.64 2.55 3.37 3.33 1.99 3.24 0.99 1.24 2.81 2.69 3.07 2.44 3.36 3.07
Sep v 0.94 0.94 2.33 2.24 2.73 3.01 3.20 2.87 1.08 1.07 2.39 2.18 2.31 1.84 2.68 2.30
σ 0.86 0.83 1.94 1.86 1.68 1.92 2.30 1.93 1.16 1.29 1.55 1.46 1.38 1.27 1.81 2.04
k 1.10 1.14 1.22 1.22 1.70 1.63 1.43 1.54 0.93 0.82 1.60 1.55 1.75 1.50 1.53 1.14
c 0.98 0.98 2.49 2.39 3.06 3.36 3.53 3.19 1.04 0.96 2.67 2.42 2.60 2.04 2.98 2.41
Oct v 0.92 0.97 2.22 2.18 2.86 2.91 2.62 2.55 1.05 1.08 2.17 2.46 2.11 1.79 2.74 2.62
σ 0.74 0.78 1.78 1.72 1.69 1.66 1.71 2.03 1.06 1.17 1.52 1.55 1.34 1.27 1.66 1.55
k 1.27 1.27 1.27 1.29 1.77 1.84 1.59 1.28 0.99 0.92 1.47 1.65 1.64 1.45 1.72 1.77
c 0.99 1.05 2.39 2.35 3.21 3.28 2.92 2.75 1.05 1.04 2.41 2.75 2.37 1.99 3.08 2.95
No
v v 0.83 0.91 2.49 2.77 2.79 2.77 2.07 2.48 1.64 1.47 2.06 1.91 1.90 1.66 2.15 2.80
σ 0.68 0.77 1.81 1.89 1.64 1.75 1.33 1.88 1.05 0.97 1.47 1.49 1.33 1.56 1.90 1.99
k 1.24 1.20 1.41 1.51 1.78 1.65 1.62 1.35 1.62 1.57 1.44 1.31 1.47 1.07 1.14 1.45
c 0.89 0.97 2.73 3.07 3.14 3.10 2.31 2.71 1.83 1.64 2.29 2.07 2.10 1.71 2.26 3.11
Dec
v 0.91 0.88 3.65 3.28 3.15 2.74 2.73 3.42 2.32 2.34 2.28 1.91 2.12 2.01 2.89 4.01
σ 0.80 0.74 2.14 2.02 1.94 1.86 1.76 2.10 0.95 0.74 1.68 1.64 1.60 1.49 1.98 2.43
k 1.15 1.21 1.79 1.69 1.69 1.52 1.61 1.70 2.64 3.49 1.39 1.18 1.36 1.38 1.51 1.72
c 0.96 0.94 4.10 3.68 3.53 3.04 3.05 3.84 2.61 2.60 2.50 2.01 2.31 2.21 3.20 4.51
Table 4.2 Monthly standard deviation and Weibull parameters (k, c)
Month
Parameter
Kuala Krai Kuala Terengganu
Kuantan Malacca Mersing Senai Sitiawan
2008 2009 2008 2009 2008 2009 2008 2009 2008 2009 2008 2009 2008 2009
Jan v 1.20 1.17 3.27 3.47 2.52 2.62 3.51 5.40 5.55 6.62 2.90 3.72 1.64 1.50
σ 0.85 0.89 1.75 2.07 1.51 1.68 1.72 2.19 1.90 1.93 2.08 2.68 1.44 1.40
k 1.45 1.35 1.97 1.75 1.74 1.62 2.17 2.66 3.20 3.81 1.43 1.43 1.15 1.08
c 1.32 1.28 3.69 3.90 2.83 2.92 3.96 6.08 6.20 7.36 3.22 4.13 1.74 1.55
Fab v 1.37 1.32 3.41 2.59 2.67 2.19 3.91 3.89 5.84 4.83 2.94 2.59 1.82 1.76
σ 0.57 0.97 1.83 1.41 1.72 1.71 1.97 2.09 2.18 1.74 2.34 2.25 1.57 1.70
k 2.59 1.40 1.97 1.94 1.61 1.31 2.11 1.96 2.92 3.03 1.28 1.17 1.17 1.04
c 1.54 1.45 3.85 2.92 2.98 2.38 4.42 4.39 6.55 5.41 3.17 2.76 1.94 1.80
Mar v 1.28 1.32 3.27 2.55 2.46 1.99 2.88 2.72 4.72 3.34 2.17 1.87 1.78 1.56
σ 0.97 0.94 1.58 1.36 1.92 1.60 1.66 1.77 2.31 1.46 1.90 1.57 1.50 1.53
k 1.35 1.45 2.20 1.98 1.31 1.27 1.82 1.59 2.17 2.46 1.16 1.21 1.20 1.02
c 1.40 1.47 3.69 2.88 2.67 2.14 3.24 3.04 5.33 3.77 2.28 2.01 1.91 1.58
Apr v 1.44 1.16 2.36 2.31 1.75 1.99 2.14 2.81 3.27 3.44 1.71 1.99 1.73 1.78
σ 1.04 0.80 1.18 1.22 1.66 1.64 1.53 1.64 1.51 1.49 1.48 1.62 1.52 1.74
k 1.42 1.50 2.12 2.00 1.06 1.23 1.44 1.79 2.31 2.48 1.17 1.25 1.15 1.02
c 1.60 1.29 2.66 2.61 1.79 2.13 2.36 3.16 3.69 3.88 1.80 2.14 1.82 1.80
May v 1.37 1.23 2.15 2.40 2.06 1.86 2.15 2.92 3.63 3.35 1.81 1.81 1.48 1.68
σ 1.03 0.93 1.16 1.25 1.71 1.50 1.58 1.67 1.77 1.57 1.77 1.54 1.43 1.71
k 1.36 1.35 1.95 2.03 1.22 1.26 1.40 1.83 2.18 2.28 1.02 1.19 1.04 0.98
c 1.50 1.34 2.43 2.71 2.20 2.00 2.36 3.29 4.10 3.78 1.83 1.93 1.51 1.67
Jun v 1.40 1.34 2.33 2.49 2.21 2.16 2.06 2.12 3.50 3.64 1.71 1.76 1.47 1.65
σ 0.93 0.85 1.04 1.18 1.85 1.73 1.58 1.62 1.58 1.65 1.60 1.61 1.40 1.59
k 1.56 1.64 2.40 2.25 1.21 1.27 1.33 1.34 2.37 2.36 1.07 1.10 1.05 1.04
c 1.56 1.51 2.63 2.81 2.35 2.33 2.24 2.31 3.95 4.11 1.76 1.83 1.52 1.68
Jul v 1.60 1.38 2.30 2.48 2.25 2.20 2.07 2.51 3.64 3.69 1.81 2.01 1.58 1.52
σ 1.06 1.02 1.08 1.28 1.74 1.78 1.47 1.84 1.88 1.77 1.65 1.88 1.48 1.60
k 1.56 1.39 2.27 2.05 1.32 1.26 1.45 1.40 2.05 2.22 1.11 1.08 1.07 0.95
c 1.78 1.51 2.60 2.80 2.44 2.37 2.28 2.76 4.10 4.17 1.89 2.09 1.63 1.69
Aug v 1.58 1.30 2.42 2.60 2.33 2.18 2.20 2.46 3.75 3.73 1.89 1.93 1.61 1.75
σ 1.11 0.92 1.18 1.35 1.87 1.87 1.69 1.79 1.81 1.82 1.76 1.66 1.64 1.78
k 1.47 1.46 2.18 2.04 1.27 1.18 1.33 1.41 2.21 2.18 1.08 1.18 0.98 0.98
c 1.75 1.44 2.73 2.93 2.52 2.31 2.39 2.70 4.23 4.21 1.95 2.05 1.61 1.74
Sep v 1.07 1.06 2.33 2.18 2.22 2.27 2.60 2.06 3.39 3.54 2.04 2.11 1.71 1.51
σ 0.83 0.86 1.11 1.18 1.83 1.75 1.98 1.73 1.69 1.64 1.86 1.66 1.61 1.48
k 1.32 1.25 2.24 1.95 1.23 1.33 1.34 1.21 2.13 2.31 1.11 1.30 1.07 1.02
c 1.16 1.14 2.42 2.46 2.38 2.47 2.83 2.19 3.83 4.00 1.95 2.29 1.76 1.53
57
Month
Parameter
Kuala Krai Kuala Terengganu
Kuantan Malacca Mersing Senai Sitiawan
Oct v 1.32 1.09 2.35 2.21 1.70 2.09 2.49 2.35 3.12 3.31 1.62 1.91 1.80 1.65
σ 0.89 1.00 1.19 1.12 1.55 1.62 1.88 1.71 1.26 1.47 1.48 1.52 1.63 1.57
k 1.53 1.10 2.09 2.09 1.11 1.32 1.36 1.41 2.68 2.41 1.10 1.28 1.11 1.06
c 1.47 1.14 2.65 2.50 1.77 2.27 2.72 2.58 3.51 3.73 2.13 2.06 1.88 1.70
Nov v 0.92 0.95 2.18 2.71 1.64 1.67 2.67 2.51 3.18 3.79 1.90 2.45 1.48 1.31
σ 0.91 0.82 1.23 1.81 1.45 1.42 1.77 1.86 1.40 1.63 1.49 1.67 1.64 1.49
k 1.01 1.17 1.86 1.55 1.14 1.19 1.56 1.38 2.44 2.50 1.30 1.52 0.89 0.87
c 0.93 1.01 2.45 3.01 1.71 1.77 2.97 2.75 3.59 4.27 2.07 2.72 1.41 1.22
Dec v 1.04 1.02 3.20 3.69 2.04 2.20 3.83 4.17 5.14 4.87 3.09 2.76 1.53 1.38
σ 0.83 0.82 1.82 1.81 1.47 1.41 2.13 2.27 2.00 1.98 2.04 2.01 1.52 1.31
k 1.28 1.27 1.85 2.17 1.43 1.62 1.89 1.94 2.79 2.66 1.57 1.41 1.00 1.06
c 1.12 1.10 3.60 4.17 2.25 2.46 4.32 4.70 5.78 5.48 3.47 3.07 1.53 1.42
Table 4. 3 Yearly mean wind speed, standard deviation, weibull parameters (k, c), most
probable wind speed and wind speed carrying max. energy
Station Year Mean
speed (v )
Standard
variation (σ)
Shape
factor
(k)
Scale
factor
(c)
Most
probable
wind speed
Wind speed
carrying max.
energy
Batu Embun 2008 0.91 0.81 1.13 0.95 0.14 2.34
2009 0.90 0.82 1.11 0.94 0.12 2.38
Bayan Lepas 2008 2.66 2.09 1.30 2.88 0.93 5.90
2009 2.65 2.07 1.31 2.88 0.96 5.84
Butter worth 2008 2.84 1.79 1.65 3.17 1.80 5.13
2009 2.88 1.87 1.60 3.21 1.74 5.33
Cameron
Highland
2008 2.57 1.76 1.51 2.86 1.40 5.00
2009 2.63 1.90 1.42 2.92 1.24 5.42
Chuping 2008 1.52 1.21 1.28 1.64 0.50 3.42
2009 1.46 1.29 1.14 1.53 0.24 3.72
Ipoh 2008 2.25 1.49 1.56 2.50 1.30 4.24
2009 2.24 1.54 1.56 2.49 1.29 4.38
KLIA
Sepang
2008 2.39 1.52 1.63 2.69 1.43 4.40
2009 2.04 1.60 1.30 2.22 0.72 4.55
Kota Bharu 2008 3.09 2.07 1.55 3.44 1.76 3.87
2009 2.82 1.97 1.48 3.13 1.46 5.58
Kuala Krai 2008 1.30 0.97 1.37 1.42 0.55 2.74
2009 1.20 0.92 1.33 1.31 0.46 2.61
Kuala
Terengganu
2008 2.63 1.46 1.89 2.96 1.99 4.34
2009 2.64 1.52 1.82 2.97 1.92 4.46
Kuantan 2008 2.16 1.72 1.28 2.38 0.71 4.86
2009 2.12 1.66 1.30 2.30 0.74 4.71
Malacca 2008 2.71 1.87 1.50 3.05 1.47 5.37
2009 2.99 2.09 1.48 3.30 1.54 5.88
Mersing 2008 4.06 2.02 2.13 4.58 3.40 6.25
2009 4.01 1.93 2.21 4.53 3.45 6.06
Senai 2008 2.13 1.87 1.15 2.24 1.49 5.38
2009 2.24 1.91 1.19 2.38 0.51 5.45
Sitiawan 2008 1.64 1.54 1.07 1.27 0.10 3.40
2009 1.59 1.59 1.00 1.59 0.02 4.77
4.2.4 Wind power and energy density
For establishing the wind power projects, the most fundamental importance is to
evaluate the wind power and wind energy density at that particular region. However,
58
one of the problems of wind power is that the power output is highly variable and reliant
on the vagaries of the weather. However, whilst the power output from a turbine cannot
be predicted for a particular time, it is possible to estimate the proportion of time that
the turbine produces different levels of power. Monthly and yearly wind power and
wind energy density have been carried out by using Equations (3.12) and (3.13) and
shown in Tables 4.4 to 4.6.
It is found that the monthly highest value of wind power density was 227.1 W/m2 at
Mersing on the month of January in 2009 and the lowest value of wind power density
was 1.3 W/m2 on November in 2008 at Batu embun. The average value of the monthly
wind power density was 26.76 W/m2. The range of the values of monthly wind energy
density was found to be between 11.23 to 1962 kWh/m2/year whereas the average wind
energy density was found to be 231.20 kWh/m2/year. It can be seen, dramatic monthly
changes in the wind power density was found with a maximum value (145.92 W/m2
in
January, 2009) being 7.67 times of the minimum (19.03 W/m2
in June, 2009) at
Malacca. Very similar results, 6.56 times (max. 173.8 W/m2 in Fabruary, 2008 and min.
26.49 W/m2 in October, 2008) for Mersing; 6.34 times (max. 94.92 W/m
2 in January,
2009 and min. 14.97 W/m2 in May, 2009) for Senai; 6.31 times (max. 65.18 W/m
2 in
July, 2009 and min. 10.33 W/m2 in October, 2009), have been found in the study
period. Such considerable amount of difference in wind power density is seen because
the wind power is proportional to the cube of the wind speed. When a wind project will
be assessed or designed, this significant defference from month to month will
underscore the importance of distinguising different months of the year.
The results of calculated mean wind speeds, standard deviation and wind power density
revealed some oddities about the wind power densities. For example, from Table 4.2
and 4.6 taking 2009 at Mersing, since the mean wind speed (3.69 m/s) is found lower in
July than the mean wind speed (3.79 m/s) in November, lower wind power density can
59
be expected in July according to the wind power density equation but it conflicts. The
wind power density (53.30 W/m2) in July is greater than the wind power density (52.45
W/m2) in November. This can be accounted for by the difference in their standard
deviations of the wind speed distributions in these months. As shown in Table 4.2, the
standard deviation (1.77 m/s) in July is greater than the standard deviation (1.63 m/s) in
November. With a higher standard deviation but lower mean wind speed, a higher wind
power density is possible because the wind power density expressed by Equation (3.12)
monotonically increases with the increase of standard deviation when the mean wind
speed is given. In other words, a month with same mean wind speed but higher standard
deviation will have more potentials to experience higher wind speeds, and the wind
power density is proportional to the cube of the wind speed, some more wind power
may be harnessed in such occasions. Considering the power density values of different
months, it is clear that January 2009 at Mersing devotes the greatest values with 227.1
W/m2. Since no wind turbo-machines could convert more than 16/27 (59.26%) of the
kinetic energy of wind energy into mechanical energy, the Lanchester-Betz law (Betz,
1942) assigns a power coefficient of 0.593 for maximum extractable power from an
optimum wind energy conversion system. Thus, the maximum power extractable is
found to be 0.593 x 227.1 W/m2 x A (swept area of the wind turbine) in January 2009.
Table 4.4 Monthly wind power and energy density
Month Para
meter
Batu Embun Bayan Lepas Butterworth Cameron
Highlands
Chuping
2008 2009 2008 2009 2008 2009 2008 2009 2008 2009
Jan P/A 2.13 2.43 42.03 93.07 37.74 52.87 37.32 48.56 11.11 17.33
E/A 18.40 21.00 363.1 804.1 326.1 456.8 322.4 419.6 95.99 149.7
Fab P/A 2.24 2.26 48.70 44.99 41.10 42.43 48.31 16.01 12.85 13.59
E/A 19.35 19.53 420.8 388.7 355.1 366.6 417.4 138.3 111.0 117.4
Mar P/A 1.77 2.65 36.35 35.33 28.67 40.92 59.53 26.04 12.33 5.28
E/A 15.29 22.90 314.1 305.3 247.7 353.6 514.3 225.0 106.53 45.62
Apr P/A 2.30 2.10 33.01 31.71 30.05 34.15 14.41 42.45 4.80 6.59
E/A 19.87 18.14 285.2 274.0 259.6 295.1 124.5 366.8 41.47 56.94
May P/A 1.94 2.00 27.94 21.78 28.08 33.41 13.38 34.55 5.96 4.83
E/A 16.76 17.28 241.4 188.2 242.6 288.7 115.6 298.5 51.49 41.73
60
Month Para
meter
Batu Embun Bayan Lepas Butterworth Cameron
Highlands
Chuping
Jun P/A 2.27 1.96 33.98 30.95 27.86 26.79 18.23 19.33 4.80 7.04
E/A 19.61 16.93 293.6 267.4 240.7 231.5 157.5 167.0 41.47 60.83
Jul P/A 2.72 2.57 55.86 45.72 38.61 35.19 10.55 19.75 6.57 5.80
E/A 23.50 22.20 482.6 395.0 333.6 304.0 91.15 170.6 56.76 50.11
Aug P/A 2.65 2.32 52.86 25.59 34.93 36.19 9.75 38.33 6.45 8.95
E/A 22.90 20.04 456.7 221.1 301.8 312.7 84.24 331.2 55.73 77.33
Sep P/A 2.48 2.22 30.07 26.59 28.43 40.19 59.27 37.98 5.48 7.90
E/A 21.43 19.18 259.8 229.7 245.6 347.2 512.1 328.2 47.35 68.26
Oct P/A 1.70 2.38 23.91 22.02 31.00 31.56 27.60 35.67 4.42 5.79
E/A 14.69 20.56 206.6 190.3 267.8 272.7 238.5 308.2 38.19 50.03
Nov P/A 1.30 1.86 28.16 34.56 29.01 31.02 13.21 30.11 6.57 4.97
E/A 11.23 16.07 243.3 298.6 250.7 268.0 114.1 260.2 56.76 42.94
Dec P/A 2.03 1.65 64.17 50.37 44.45 33.56 30.59 56.18 11.65 20.02
E/A 17.54 14.26 554.4 435.2 384.1 290.0 264.3 485.4 100.66 173.0
Table 4.5 Monthly wind power and energy density
Month Param
eter
Ipoh KLIA Sepang Kota Bharu Kuala Krai Kuala
Terengganu
2008 2009 2008 2009 2008 2009 2008 2009 2008 2009
Jan P/A 15.91 25.67 27.88 59.30 73.76 66.00 2.99 3.18 41.55 56.68
E/A 137.5 221.8 240.9 512.4 637.3 570.2 25.83 27.48 359.0 489.7 Fab P/A 23.27 16.47 33.54 13.00 114.9 45.19 2.42 4.26 47.19 21.04
E/A 201.1 142.3 289.8 112.3 992.9 390.4 20.91 36.81 407.7 181.8 Mar P/A 14.48 23.87 23.81 12.93 118.1 33.93 4.15 4.16 37.24 19.75
E/A 125.1 206.2 205.7 111.7 1020 293.2 35.86 35.94 321.8 170.6 Apr P/A 15.32 20.75 12.97 18.65 35.52 31.49 5.57 2.63 14.53 14.48
E/A 132.4 179.3 112.1 161.1 306.9 272.1 48.12 22.72 125.5 125.1 May P/A 14.95 16.94 14.50 17.01 26.88 27.55 5.00 3.64 12.04 15.97
E/A 129.2 146.4 125.3 147.0 232.2 238.0 43.20 31.45 104.0 138.0 Jun P/A 13.99 13.86 17.13 11.19 25.14 19.03 4.33 3.63 12.59 16.17
E/A 120.9 119.8 148.0 96.68 217.2 164.4 37.41 31.36 108.8 139.7 Jul P/A 18.30 16.89 25.23 65.18 28.83 30.06 6.43 4.87 12.70 17.34
E/A 158.1 145.9 218.0 563.2 249.1 259.7 55.56 42.08 109.7 149.8 Aug P/A 21.47 19.31 27.12 17.97 31.13 30.31 6.83 3.84 15.33 20.03
E/A 185.5 166.8 234.3 155.3 269.0 261.9 59.01 33.18 132.5 173.1 Sep P/A 20.99 16.41 16.79 10.40 31.28 33.00 2.49 2.70 10.42 12.49
E/A 181.4 141.8 145.1 89.85 270.3 285.1 21.51 23.32 90.03 107.9 Oct P/A 17.83 21.78 14.02 10.33 29.71 24.06 3.76 3.92 14.59 12.25
E/A 154.1 188.2 121.1 89.25 256.7 207.9 32.49 33.87 126.1 105.8 Nov P/A 15.89 14.45 11.80 14.39 27.22 39.43 2.85 2.24 12.97 31.27
E/A 137.3 124.9 102.0 124.3 235.2 340.7 24.62 19.35 112.1 270.2 Dec P/A 22.30 17.26 18.50 15.54 39.34 89.90 2.41 2.33 41.44 54.63
E/A 192.7 149.1 159.8 134.3 339.9 776.7 20.82 20.13 358.0 472.0
61
Table 4.6 Monthly wind power and energy density
Mont
h
Paramet
er
Kuantan Malacca Mersing Senai Sitiawan
2008 2009 2008 2009 2008 2009 2008 2009 2008 2009
Jan P/A 21.80 26.69 46.78 145.92 143.0
6
227.1
0
44.99 94.92 12.13 10.45
E/A 188.4 230.6 404.2 1261 1236 1962 388.7 820.1 104.8 90.29 Fab P/A 28.53 21.96 66.64 70.48 173.8 96.98 54.63 45.72 15.88 18.47
E/A 246.5 189.7 575.8 608.95 1502 837.9 472.0 395.0 137.2 159.6 Mar P/A 31.01 17.17 31.04 31.15 114.1 36.43 26.72 16.17 14.17 13.46
E/A 267.9 148.4 268.2 269.1 985.7 314.8 230.9 139.7 122.4 116.3 Apr P/A 17.11 18.23 17.39 29.38 36.00 39.71 12.68 17.89 13.88 19.90
E/A 147.8 157.5 150.3 253.8 311.0 343.1 109.6 154.6 119.9 171.9 May P/A 20.74 14.31 18.36 32.06 51.92 39.04 20.91 14.97 10.90 18.46
E/A 179.2 123.6 158.6 277.0 448.6 337.3 180.7 129.3 94.18 159.5 Jun P/A 25.83 22.16 17.76 19.03 43.41 48.90 15.66 16.22 10.86 15.01
E/A 223.1 191.5 153.5 164.4 375.1 422.5 135.3 140.1 93.83 129.7 Jul P/A 23.13 23.81 15.54 29.36 54.46 53.30 17.24 25.61 12.47 21.76
E/A 199.8 205.7 134.3 253.7 470.5 460.5 149.0 221.3 107.7 188.0 Aug P/A 28.03 26.20 21.57 27.25 56.09 56.22 20.80 18.31 16.54 20.88
E/A 242.2 226.4 186.4 235.4 484.6 485.7 179.7 158.2 142.9 180.4 Sep P/A 25.68 23.81 34.98 20.91 43.01 45.86 18.94 19.93 15.69 12.22
E/A 221.9 205.7 302.2 180.7 371.6 396.2 163.6 172.2 135.6 105.6 Oct P/A 14.16 18.63 30.20 23.77 26.49 35.92 15.57 14.99 16.97 14.65
E/A 122.3 161.0 260.9 205.4 228.9 310.3 134.5 129.5 146.6 126.6 Nov P/A 11.79 11.51 29.85 29.93 31.74 52.45 14.72 24.04 16.71 12.07
E/A 101.9 99.44 257.9 258.6 274.2 453.2 127.2 207.7 144.4 104.3 Dec P/A 15.35 15.96 70.12 87.76 123.0 106.8 47.09 40.05 13.16 8.54
E/A 132.6 137.9 605.8 758.3 1063 923.1 406.9 346.0 113.7 73.79
The most probable wind speed and wind speed carrying maximum energy is calculated
by using Equations 3.9 and 3.10 are shown in Table 4.7. It is observed from Table 2.40
that the yearly highest values of the most probable wind speed and wind speed carrying
maximum energy are 3.45 m/s and 6.25 m/s respectively. The yearly average values of
the most probable wind speed and the wind speed carrying maximum energy are found
to be 1.18 m/s and 4.59 m/s respectively. The yearly wind power and wind energy
density are evaluated, respectively by Equations (3.11) and (3.12) and shown in Table
4.7. Clearly, the yearly highestt value of wind power density was in 2008 followed by
2009 at Mersing while the lowest one was found to be in 2008 at Batu Embun. The
highest value of the yearly wind energy density was found to be 659.28 kWh/m2/year in
2008 at Mersing. As it can be seen in Table 4.7, the values of power and energy related
62
to meteorological prediction are fairly greater for some years and smaller for some
years than those of Weibull prediction. The discrepancies are almost considerable may
be due to low wind speed values in these sites. This is in close agreement with the
findings of Zhou et al. (2006) who suggested that the discrepancies between the Weibull
function predictions and the wind speed data are much wider as the wind speed
approaches its lower limit. However, for the purpose of estimating wind power
potentials, the difference may always be ignored for the wind turbines where little or
even no energy output under such low wind speeds are provided. For higher wind
speeds, Weibull distribution function can be coincided with the wind data very well.
The maximum wind power and wind energy density for Weibull prediction were found
to be 73.56 W/m2 and 635.56 kWh/m
2/year respectively at Mersing, whereas for
meteorological prediction, they were 75.26 W/m2 and 650.24 kWh/m
2/year
respectively.
Table 4.7 Yearly wind power density and wind energy density
Station Year Meteorological Weibull
Vmp Vmax,E P/A E/A P/A E/A
Batu
Embun
2008 1.84 15.90 2.07 17.88 0.14 2.34
2009 1.83 15.81 1.95 16.85 0.12 2.38
Bayan
Lepas
2008 36.40 314.50 39.65 342.58 0.93 5.90
2009 36.16 312.42 38.92 336.27 0.96 5.84
Butter
worth
2008 32.61 281.75 33.36 288.23 1.80 5.13
2009 35.65 308.02 36.47 315.10 1.74 5.33
Cameron
Highland
2008 28.30 244.51 28.37 245.12 1.40 5.00
2009 33.96 293.41 33.85 292.46 1.24 5.42
Chuping 2008 6.49 56.08 4.65 40.18 0.50 3.42
2009 6.88 59.44 4.23 36.55 0.24 3.72
Ipoh 2008 17.91 154.74 17.80 153.79 1.30 4.24
2009 18.63 160.96 17.59 151.98 1.29 4.38
KLIA
Sepang
2008 20.36 175.91 20.63 178.24 1.43 4.40
2009 17.73 153.19 18.16 156.90 0.72 4.55
Kota Bharu 2008 44.80 387.07 47.12 407.12 1.76 3.87
2009 36.60 316.22 38.69 334.28 1.46 5.58
Kuala Krai 2008 4.54 39.22 4.21 36.37 0.55 2.74
2009 3.64 31.44 2.66 22.98 0.46 2.61
Kuala
Terengganu
2008 23.02 198.89 22.56 194.92 1.99 4.34
2009 24.73 213.67 23.91 206.58 1.92 4.46
Kuantan 2008 20.66 178.50 21.69 187.40 0.71 4.86
2009 19.05 164.59 20.20 174.53 0.74 4.71
63
Station Year Meteorological Weibull
Vmp Vmax,E P/A E/A P/A E/A
Malacca 2008 33.76 291.69 34.76 300.33 1.47 5.37
2009 43.79 378.35 45.34 391.74 1.54 5.88
Mersing 2008 75.26 650.24 73.56 635.56 3.40 6.25
2009 70.79 611.63 68.89 595.21 3.45 6.06
Senai 2008 23.64 204.25 25.88 223.60 1.49 5.38
2009 26.48 228.79 28.07 242.52 0.51 5.45
Sitiawan 2008 12.13 104.80 5.90 50.98 0.10 3.40
2009 12.47 107.74 14.23 122.95 0.02 4.77
4.2.5 Weibull distribution and cumulative distribution
The strength of wind varies, and an average value for a given location does not alone
indicate the amount of energy a wind turbine could produce there. To assess the
frequency of wind speeds at a particular location, a probability distribution function is
often fit to the observed data. Different locations will have different wind speed
distributions. The Weibull model closely mirrors the actual distribution of hourly wind
speeds at many locations. Wind distribution profile is one of the main keys to wind
energy resource assessment for a region of a particular country. If a graph is plotted of
the number of times, or frequency, with which winds occur at various speeds throughout
the year, it is found that there are few occurrences of no wind and few occurrences of
winds above hurricane force. Most of the time wind speeds fall some where in between
these extremes. The Weibull distribution can be presented in two forms: the „probability
density function‟ and the „cumulative distribution function‟. The probability density
function produces the most intuitive results and so is most commonly used.
The cumulative distribution function can be used for estimating the fraction of time „T‟
the turbine will be turning. This may be a very important consideration if a turbine is to
feature in a prominent position in the urban landscape or be considered iconic. In the
case of a cut-in speed of 3 m/s and cut-out speed of 25 m/s, the following equation can
be used:
)1.4(/25/3kk
cc eeT
64
The probability density and cumulative distribution functions of the wind rigimes,
following the Weibull distribution are shown in Figures 4.31 to 4.60. The k and c values
for these sites are shown in their respective probability distribution functions. The
Equations (3.2) and (3.3) have been used to evaluate the Weibull probability distribution
function and Weibull cumulative distribution function respectively. As the peak of the
probability density curve indicates the most frequent wind velocity in the particular
regime, it can be easily seen from the curves that the range of the most frequent wind
speed values is between 1 m/s to 3.5 m/s.
The result shows that, Mersing is the most „windy‟ place with the largest scale
parameter c, and its most frequent wind speed is 3.5 m/s. The result also shows that, the
Kuala Terengganu is in the second position with the scale parameter value of 2.97 m/s
and most frequently wind speed value of 3.00 m/s. For other most of the sites, the most
frequent wind speeds are below the 2.5 m/s. Generally wind turbines are designed with
a cut-in speed, or the wind speed at which it begins to produce power, and a cut-out
speed, or the wind speed at which the turbine will be shut down to prevent the drive
train from being damaged. For most wind turbines, the range of cut-in speed is 3.0 ~
4.50 m/s, and the cut-out speed can be as highly as 25 m/s. So from the probability
distribution function, it is found that the Mersing and Kuala Terengganu are the two
most probable wind energy generating sites in Peninsular Malaysia.
From Weibull probability density function, it can be seen that the maximum percentage
of error between Weibull wind speed frequencies and observed frequencies occurs at 3
m/s or more than 3 m/s is almost insignificance with the highest value of the error is
20%. On the other hand, for wind speed less than 3 m/s the error between the Weibull
density function and observed density function are larger with the maximum error value
is around 46 %. This is because Weibull distribution function is unable to represent the
probabilities of observing zero or very low wind speed. It is observed that Weibull
65
distribution fits the observed distribution reasonably well in the higher wind speed
range. Previous studies have also concluded that the Weibull distribution fits the actual
wind speed frequencies quite well at the larger wind speed (Keyhani et al., 2010;
Morgan, 1995).
Figure 4.31 Weibull and observed wind speed frequencies at Batu Embun
Figure 4.32 Weibull and observed wind speed frequencies at Bayan Lepas
0
0.1
0.2
0.3
0.4
0.5
0.6
1 2 3 4 5 6 7 8 9
Fre
qu
ency
Wind Speed (m/s)
Observed
Weibull
0
0.05
0.1
0.15
0.2
0.25
0.3
1 2 3 4 5 6 7 8 9
Fre
qu
ency
Wind Speed (m/s)
Observed
Weibull
66
Figure 4.33 Weibull and observed wind speed frequencies at Butterworth
Figure 4.34 Weibull and observed wind speed frequencies at Cameron Highland
Figure 4.35 Weibull and observed wind speed frequencies at Chuping
0
0.05
0.1
0.15
0.2
0.25
0.3
1 2 3 4 5 6 7 8 9F
req
uen
cy
Wind Speed (m/s)
Observed
Weibull
0
0.05
0.1
0.15
0.2
0.25
0.3
1 2 3 4 5 6 7 8 9
Fre
qu
ency
Wind Speed (m/s)
Observed
Weibull
0
0.1
0.2
0.3
0.4
0.5
0.6
1 2 3 4 5 6 7 8 9
Fre
qu
ency
Wind Speed (m/s)
Observed
Weibull
67
Figure 4.36 Weibull and observed wind speed frequencies at Ipoh
Figure 4.37 Weibull and observed wind speed frequencies at KLIA Sepang
Figure 4.38 Weibull and observed wind speed frequencies at Kota Bharu
-0.05
0
0.05
0.1
0.15
0.2
0.25
0.3
0.35
1 2 3 4 5 6 7 8 9
Freq
uen
cy
Wind Speed (m/s)
Observed
Weibull
0
0.05
0.1
0.15
0.2
0.25
0.3
0.35
1 2 3 4 5 6 7 8 9
Fre
qu
ency
Wind Speed (m/s)
Observed
Weibull
0
0.05
0.1
0.15
0.2
0.25
1 2 3 4 5 6 7 8 9
Fre
qu
ency
Wind Speed (m/s)
Observed
Weibull
68
Figure 4.39 Weibull and observed wind speed frequencies at Kuala Krai
Figure 4.40 Weibull and observed wind speed frequencies at Kuala Terengganu
Figure 4.41 Weibull and observed wind speed frequencies at Kuantan
0
0.1
0.2
0.3
0.4
0.5
0.6
1 2 3 4 5 6 7 8 9F
req
uen
cy
Wind Speed (m/s)
Observed
Weibull
0
0.05
0.1
0.15
0.2
0.25
0.3
0.35
1 2 3 4 5 6 7 8 9
Fre
qu
ency
Wind Speed (m/s)
Observed
Weibull
0
0.05
0.1
0.15
0.2
0.25
0.3
0.35
1 2 3 4 5 6 7 8 9
Fre
qu
ency
Wind Speed (m/s)
Observed
Weibull
69
Figure 4.42 Weibull and observed wind speed frequencies at Malacca
Figure 4.43 Weibull and observed wind speed frequencies at Mersing
Figure 4.44 Weibull and observed wind speed frequencies at Senai
0
0.05
0.1
0.15
0.2
0.25
1 2 3 4 5 6 7 8 9
Fre
qu
ency
Wind Speed (m/s)
Observed
Weibull
0
0.05
0.1
0.15
0.2
0.25
0.3
1 2 3 4 5 6 7 8 9
Fre
qu
ency
Wind Speed (m/s)
Observed
Weibull
0
0.05
0.1
0.15
0.2
0.25
0.3
0.35
1 2 3 4 5 6 7 8 9
Freq
uen
cy
Wind Speed (m/s)
Observed
Weibull
70
Figure 4.45 Weibull and observed wind speed frequencies at Sitiawan
It is observed that the Weibull cumulative frequency disributions are closer to the
observed cumulative frequency distributions. The cumulative distribution function can
be used for estimating the time for which wind is within a certain velocity interval. If
3.0 m/s and 25 m/s are used as the cut-in and cut-out speeds, as for example from
Equation (4.1), it is found that Mersing will have the highest operating possibility of
67% (around 5789 hours per year), Kota Bharu, Butterworth, Malacca and Kuala
Terrengganu will have 42% (around 3629 hours per year), 40% (around 3456 hours per
year), 39% (around 3370 hours per year) and 36% (around 3110 hours per year)
respectively.
Figure 4.46 Cumulative distribution function at Batu Embun
0
0.05
0.1
0.15
0.2
0.25
0.3
0.35
0.4
0.45
1 2 3 4 5 6 7 8 9F
req
uen
cy
Wind Speed (m/s)
Observed
Weibull
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10
F (
V)
Wind speed (m/s)
Observed
Weibull
71
Figure 4.47 Cumulative distribution function at Bayan Lepas
Figure 4.48 Cumulative distribution function at Butterworth
Figure 4. 49 Cumulative distribution function at Cameron Highland
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10F
(V
)
Wind speed (m/s)
Observed
Weibull
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10
F (
V)
Wind speed (m/s)
Observed
Weibull
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10
F (
V)
Wind speed (m/s)
Observed
Weibull
72
Figure 4.50 Cumulative distribution function at chuping
Figure 4.51 Cumulative distribution function at Ipoh
Figure 4.52 Cumulative distribution function at KLIA Sepang
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10F
(V
)
Wind speed (m/s)
Observed
Weibull
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10
F (
V)
Wind speed (m/s)
Observed
Weibull
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10
F (
V)
Wind speed (m/s)
Observed
Weibull
73
Figure 4.53 Cumulative distribution function at Kota Bharu
Figure 4.54 Cumulative distribution function at Kuala Krai
Figure 4.55 Cumulative distribution function at Kuala Terengganu
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10F
(V
)
Wind speed (m/s)
Observed
Weibull
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10
F (
V)
Wind speed (m/s)
Observed
Weibull
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10
F (
V)
Wind speed (m/s)
Observed
Weibull
74
Figure 4.56 Cumulative distribution function at Kuantan
Figure 4.57 Cumulative distribution function at Malacca
Figure 4.58 Cumulative distribution function at Mersing
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10F
(V
)
Wind speed (m/s)
Observed
Weibull
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10
F (
V)
Wind speed (m/s)
Observed
Weibull
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10
F (
V)
Wind speed (m/s)
Observed
Weibull
Year: 2008-2009
k=2.16, c=4.55
75
Figure 4.59 Cumulative distribution function at Senai
Figure 4.60 Cumulative distribution function at Sitiawan
4.2.6 Polar diagrams
Determining wind speed according to wind direction is important to conduct wind
energy researchers and displays the impact of geographical features on the wind.
Although the wind direction may not be a major concern for wind farm development in
open-field areas, it can prove very important when considering urban wind energy and
assessing the suitability of a particular location. Analyzing the average energy content
of the wind from the various wind directions gives an appreciation of where the
dominant high energy flows originate. This information can be related to the proposed
location to determine an optimal turbine position or, at least, to avoid obstacles such as
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10F
(V
)
Wind speed (m/s)
Observed
Weibull
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6 7 8 9 10
F (
V)
Wind speed (m/s)
Observed
Weibull
76
tall buildings and trees upstream of the turbine. In the case of building- integrated
turbines, knowledge of directionality can be even more important as the buildings will
often be designed to accelerate winds from certain key directions.
In order to use the wind energy properly, it is very essential to determine the wind
direction with other parameters. WRPLOT software is used to draw the polar diagram
of wind speed to show the wind direction. The circular diagram displays the relative
frequency of wind directions in 8 or 16 principal directions. The wind direction is
illustrated in polar diagrams and is measured clockwise in degrees. The cycle (360˚),
which represents the cardinal points, is devided into 16 sectors and each of them covers
an arc of 22. 5°. Based on the wind dirrection data collected from the meteorological
department, the frequencies (%) are plotted in polar diagrams with respect to the
cardinal point, from which the wind blows. The observed wind speed data directions are
plotted in polar diagrams with respects to the cardinal point to show the wind direction
in Figuress 4.61 to 4.75. It is noticed that the direction of wind blow in tha same area of
different years is characterized by a significant stability.
As for example, if Mersing is considered, It can be found that the most probable wind
direction for the two-year period is on 247. 5˚ and the second most probable wind
direction is on 0˚. From the resultant vector, the most probable wind direction for the
study period is on 270˚, i.e. west winds. The prevailing winds are due 247.5˚ on a
percentage is around 18.5%, wlhereas the second most prevailing winds are due 0˚ and
the resultant vector winds due 270˚ are around 15.8% and 24% respectively. In the
quadrants, which correspond to the south-east, the wind frequency appears to be very
low. On the other hand, for the study period the wind speeds less than 3 m/s are only
11.3%, which are not suitable for generating wind energy. If we consider the 15 study
sites, the most probable wind directions are varying considerably. For all the sites, the
77
prevailing winds from the most probable wind directions on the percentage ranging
from 15 to 41% and the wind speeds less than 3 m/s are ranging from 11.2-89.2%.
Figure 4.61 Wind rose-wind direction for the years 2008-2009, Batu Embun
Figure 4.62 Wind rose-wind direction for the years 2008, Lepas
Resultant Vector
349 deg - 42%
NORTH
SOUTH
WEST EAST
8%
16%
24%
32%
40%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
Resultant Vector
342 deg - 35%
NORTH
SOUTH
WEST EAST
6%
12%
18%
24%
30%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
78
Figure 4.63 Wind rose-wind direction for the years 2008-2009, Butterworth
Figure 4.64 Wind rose-wind direction for the years 2008-2009, Cameron Highland
Resultant Vector
33 deg - 30%
NORTH
SOUTH
WEST EAST
4%
8%
12%
16%
20%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
Resultant Vector
351 deg - 28%
NORTH
SOUTH
WEST EAST
4%
8%
12%
16%
20%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
79
Figure 4.65 Wind rose-wind direction for the years 2008-2009, Chuping
Figure 4.66 Wind rose-wind direction for the years 2008-2009, Ipoh
Resultant Vector
1 deg - 51%
NORTH
SOUTH
WEST EAST
9%
18%
27%
36%
45%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
Resultant Vector
42 deg - 38%
NORTH
SOUTH
WEST EAST
4%
8%
12%
16%
20%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
80
Figure 4.67 Wind rose-wind direction for the years 2008-2009, KLIA Sepang
Figure 4.68 Wind rose-wind direction for the years 2008-2009, Kota Bharu
Resultant Vector
20 deg - 14%
NORTH
SOUTH
WEST EAST
4%
8%
12%
16%
20%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
Resultant Vector
128 deg - 9%
NORTH
SOUTH
WEST EAST
4%
8%
12%
16%
20%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
81
Figure 4.69 Wind rose-wind direction for the years 2008-2009, Kuala Krai
Figure 4.70 Wind rose-wind direction for the years 2008-2009, Kuala Terengganu
Resultant Vector
191 deg - 1%
NORTH
SOUTH
WEST EAST
4%
8%
12%
16%
20%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
Resultant Vector
147 deg - 19%
NORTH
SOUTH
WEST EAST
4%
8%
12%
16%
20%
WIND SPEED
(Knots)
>= 16
14 - 15
12 - 13
10 - 11
8 - 9
6 - 7
4 - 5
2 - 3
0 - 1
Calms: 0.00%
82
Figure 4.71 Wind rose-wind direction for the years 2008-2009, Kuantan
Figure 4.72 Wind rose-wind direction for the years 2008-2009, Malacca
Resultant Vector
359 deg - 29%
NORTH
SOUTH
WEST EAST
7%
14%
21%
28%
35%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
Resultant Vector
25 deg - 34%
NORTH
SOUTH
WEST EAST
5%
10%
15%
20%
25%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
83
Figure 4.73 Wind rose-wind direction for the years 2008-2009, Mersing
Figure 4.74 Wind rose-wind direction for the years 2008-2009, Senai
Resultant Vector
270 deg - 24%
NORTH
SOUTH
WEST EAST
4%
8%
12%
16%
20%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
Resultant Vector
348 deg - 41%
NORTH
SOUTH
WEST EAST
7%
14%
21%
28%
35%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
84
Figure 4.75 Wind rose-wind direction for the years 2008-2009, Sitiawan
4.3 Contour mapping of mean wind speed in Peninsular Malaysia
The National Renewable Energy Laboratory (NREL) has developed an automated
technique for wind resource mapping to aid in the acceleration of wind energy
deployment. The new automated mapping system was developed with the following two
primary goals: (1) to produce a more consistent and detailed analysis of the wind
resource for a variety of physiographic settings, particularly in areas of complex terrain;
and (2) to generate high quality map products on a timely basis. Regional wind resource
maps using this new system have been produced for areas of the United States, Mexico,
Chile, Indonesia (1), and China. Countrywide wind resource assessments are under way
for the Philippines, the Dominican Republic, and Mongolia. Regional assessments in
Argentina and Russia are scheduled to begin soon. Malaysia is still so far from this idea
and though the government of Malaysia includes RE as the fifth fuel in the energy mix
the advancement is a nonentity. One of the key things to know about wind speed is that
the amount of energy which wind can generate is not a one to one function. Rather
Resultant Vector
18 deg - 33%
NORTH
SOUTH
WEST EAST
7%
14%
21%
28%
35%
WIND SPEED
(m/s)
>= 8.0
7.0 - 8.0
6.0 - 7.0
5.0 - 6.0
4.0 - 5.0
3.0 - 4.0
2.0 - 3.0
1.0 - 2.0
0.0 - 1.0
Calms: 0.00%
85
energy increases by the cube of the wind speed. If we double the wind speed, we will
get eight times the energy. That is one reason that looking at wind maps is so useful.
Even a small difference in wind speed within a given area can have a big impact on the
amount of energy a wind turbine can generate. If the wind speed increases even a few
m/s by varying the wind turbine position the energy generation potential goes way up.
That is why a wind resource potential map is a very useful resource for evaluating a site
for its wind energy potential.
From the wind energy map, anyone could easily understand the wind speed and
prevailing area of that wind speed. In this study, with the assessment of wind energy the
wind energy map has been generated by the geographical parameters (latitude,
longitude, and altitude), and months of the year were used as input for the development
model to predict the monthly mean wind speed from January to December. The
predicted monthly mean wind speeds for the Peninsular Malaysia are presented in the
form of monthly maps using the Geographical Information System (GIS) ArcGIS 9.3
software. Predicted monthly mean wind speed maps are shown in Figures 4.76 to 4.87,
whereas the predicted yearly mean wind speeds' map is shown in Figure 4.88. From the
monthly mean wind speed map, it can be seen that the southern part of Peninsular
Malaysia is windier than that of the other parts. The range of the monthly mean wind
speeds is found to be 0.80 m/s to 6.0 m/s whereas the range of the yearly mean wind
speeds is estimated to be 0.9 m/s to 3.9 m/s. From the map, it can be easily understood
that Mersing is the most promising wind energy site in Peninsular Malaysia with the
monthly mean wind speed range from 3.00 m/s to 6.0 m/s. Mersing has been also
reported as the most promising wind energy site in Malaysia by Sopian et al. (1995). In
the present technology, this site is suitable for a year round small-scale wind energy
production. Some other sites like Malacca, Johor, Kuala Terengganu and Bayan Lepas
are suitable for small-scale electricity generation around the quarter of the year.
86
Figure 4.76 Contour Map on predicted monthly mean wind speed (m/s) for January
87
Figure 4.77 Contour Map on predicted monthly mean wind speed (m/s) for December
88
Figure 4.78 Contour Map on predicted yearly mean wind speed (m/s)
89
CHAPTER 5: CONCLUSIONS AND SUGGESTIONS
5.1 Introduction
The rapid industrialization and technological development have raised a global energy
crisis in the current power utilization, which has emerged as one of the major
concerning issues. The various sources for large-scale power generation are the fossil
fuels, nuclear and minerals are found in the earth‟s crust. These fossil fuels, nuclear and
minerals are not renewable and will be exhausted someday. The increase rate of
depletion of fossil energy resources in one hand and growing energy demand, on the
other hand, has initiated considerable research activity worldwide to explore means for
tapping of renewable energy resources. Wind energy due to its freely availability, clean
and renewable character is found as the most promising renewable energy resource that
could play a key role in solving the worldwide energy crisis. There is no doubt that
wind energy has already achieved its standards in power generation, from the fact that
the major technology developments facilitating the wind power commercialization have
already been made.
This dissertation performed the assessment of wind energy potentiality and wind
energy mapping of Peninsular Malaysia based on the hourly surface mean wind speed
from 15 meteorological stations. In this chapter, the main outcome of this dissertation
and suggestions for the future work will be discussed.
5.2 Assessment of wind energy potentiality
In assessment of wind energy potentiality, hourly mean wind speed data for two years
of each station were statically analyzed. The wind energy potential of these stations has
been studied based on the Weibull distribution function. The probability density
90
distributions, cumulative distribution, wind directions were derived and most
importantly the distribution parameters were identified. The most important outcomes
of the study can be summarized as follows:
The values of the hourly mean wind speed ranges are between 0.32 m/s to 5.67
m/s.
The daytime, from 8 am to 6 pm, is windy for all the years round, while the
nighttime is relatively calm.
At all stations, the highest average wind speeds are observed at 3 pm for the
study period.
During the study period for Bayan Lepas, Cameron Highland, Chuping, Kota
Bharu, Kuala Terengganu, Kuantan, Malacca, Mersing and Senai, it is found that
the month of December to March is windier than that of the remaining months in
a year.
Most of the monthly mean wind speed values are between 1.5 m/s to 4.5 m/s, but
some are over 4.5 m/s and few are under 1.5 m/s. While January 2009 at
Mersing shown the highest mean wind speed value with 6.62 m/s, May 2009 at
Chuping shown the minimum wind speed value with 0.81 m/s.
The mean wind speeds for all the years are lower than 4.5 m/s and the range of
the yearly mean wind speed values is from 0.90 to 4.06 m/s.
The monthly standard deviation can be found in the range of 0.57 m/s to 2.68
m/s whereas, the yearly standard deviation range is found to be between 0.81
m/s to 2.09 m/s.
The parameter k has a much smaller, temporal variation than the parameter c.
The monthly values of k range between 0.73 and 3.81, with an average value of
1.55, whereas the yearly values of k range between 1 and 2.21 with the average
value of 1.44. The lowest value of the scale parameter c is 0.69 m/s and is found
91
in year 2009 at Chuping, while the highest value is 7.36 m/s, which occered in
the year 2009 at Mersing.
The monthly highest value of wind power density was 227.1 W/m2 at Mersing
on the month of January in 2009 and the lowest value of wind power density
was 1.3 W/m2 on November in 2008 at Batu embun.
The average value of the monthly wind power density was 26.76 W/m2.
The range of the values of monthly wind energy density was found to be
between 11.23 to 1962 kWh/m2/year whereas the average wind energy density
was found to be 231.20 kWh/m2/year.
Dramatic monthly changes in the wind power density was found with a
maximum value (145.92 W/m2
in January, 2009) being 7.67 times of the
minimum (19.03 W/m2 in June, 2009) at Malacca.
The maximum power extractable is found to be 0.593 x 227.1 W/m2 x A (swept
area of the wind turbine) at Mersing in January 2009.
The yearly highest values of the most probable wind speed and wind speed
carrying maximum energy are 3.45 m/s and 6.25 m/s respectively. The yearly
average values of the most probable wind speed and the wind speed carrying
maximum energy are found to be 1.18 m/s and 4.59 m/s respectively.
The maximum wind power and wind energy density for Weibull prediction were
found to be 73.56 W/m2 and 635.56 kWh/m
2/year respectively at Mersing,
whereas for meteorological prediction, they were 75.26 W/m2 and 650.24
kWh/m2/year respectively.
From the Weibull distribution curves, it is found that the range of the most
frequent wind speed values is between 1 m/s to 3.5 m/s. Mersing is the most
„windy‟ place with the largest scale parameter c, and its most frequent wind
speed is 3.5 m/s. The result also shows that, the Kuala Terengganu is in the
92
second position with the scale parameter value of 2.97 m/s and most frequently
wind speed value of 3.00 m/s.
The maximum percentage of error between Weibull wind speed frequencies and
observed frequencies occurs at 3 m/s or more than 3 m/s is almost insignificance
with the highest value of the error is 20%. On the other hand, for wind speed less
than 3 m/s the error between the Weibull density function and observed density
function are larger with the maximum error value is around 46 %.
From cumulative distribution function, it is found that Mersing will have the
highest operating possibility of 67% (around 5789 hours per annum), Kota
Bharu, Butterworth, Malacca and Kuala Terrengganu will have 42% (around
3629 hours per annum), 40% (around 3456 hours per annum), 39% (around
3370 hours per annum and 36% (around 3110 hours per annum respectively.
It is noticed polar diagram that the direction of wind blow in tha same area of
different years is characterized by a significant stability.
The prevailing winds from the most probable wind directions on the percentage
ranging from 15 to 41% and the wind speeds less than 3 m/s are ranging from
11.2-89.2%.
5.3 Contour maps
Geographical Information System (GIS) is potentially well suited for identifying wind
energy potential zones as it can manage and analyze the diverse multidisciplinary spatial
and temporal data needed in this application. This is useful as a planning tool as it
provides the user with the freedom to use their individual expertise in analyzing the
local conditions and in the decision making process. The wind potential zone maps can
be used easily to assist in making appropriate decisions. The GIS also helps in
integrating additional relevant layers of information, such as prevailing wind, terrain,
93
adjacent terrain, vegetation, proximity to residential areas, noise and appearance and
public satisfaction, which are to be taken into consideration while locating wind farm
sites. This also would help in locating the most suitable site among several of the
„„ideal‟‟ sites from the spatial data by assessing their suitability on an individual basis
considering various constraints.
From the monthly mean wind speed map, it is found that the southern part of
Peninsular Malaysia is windier than that of the other parts in Peninsular
Malaysia.
The range of the monthly mean wind speeds is found to be 0.80 m/s to 6.0 m/s
whereas the range of the yearly mean wind speeds is estimated to be 0.9 m/s to
3.9 m/s.
Mersing is the most promising wind energy site in Peninsular Malaysia with the
monthly mean wind speed range from 3.00 m/s to 6.0 m/s.
Mersing is suitable for a year round small-scale wind energy production. Some
other sites like Malacca, Kota Bharu, Kuala Terengganu and Bayan Lepas are
suitable for small-scale electricity generation around the quarter of the year.
5.4 Suggestions for future work
Because of the relative simplicity of wind energy systems and the availability of wind
resources, wind power is expected to play a significant role in meeting some of the
future energy needs. With this, there are number of problems to be resolved if the wind
resource is to be used effectively and efficiently. For the development of wind energy in
Malaysia the following works can be done in the future:
In this study, initial assessment of wind energy potentiality in Peninsular
Malaysia has been done; collecting two-year data from Malaysian
94
Meteorological Station (MMD) for each station. From literature review, it has
been found that for reliable assessment of wind energy potentiality, at least 30
years wind speed data is needed. So, in the future, anyone can collect the 30
years hourly surface mean wind speed data and make this research work
stronger.
Moreover, in Peninsular Malaysia there are around 32 meteorological wind
stations; among them only 15 stations have been selected for this study. For
better contour mapping, station-station distant should be within 50 km;
otherwise, that contour map may contain some inaccuracy at the time of
interpolation and extrapolation. So, in the future, during development of any
wind energy project this should be considered.
For the wind energy project, cost analysis is much more important. So anyone
can analyze the initial cost site by site and can give the feed back period and
make the decision, whether it would be viable or not.
Turbine selection is a very important in the wind energy project so after detail
assessment attention should be given to select the suitable wind turbine.
Generally, wind turbine selection depends on the characteristics of wind speed,
topography, etc.
In Peninsular Malaysia, the wind speed is not so strong. Therefore, to produce
economically viable wind energy, manufacturing facilities for wind machines
could also be created an adequate distribution, installation, operation and
maintenance infrastructures must be developed in the country.
Resource and development work is still required to develop cost effective and
reliable windmills of varying types and sizes, made of local materials.
95
Due attention should be paid in selecting an appropriate site for the installation
of windmills so that they can perform satisfactorily over a reasonable period
requiring little maintenance.
In case of power generation, major obstacles such as energy storage need to be
overcome by linking wind generators as a bypass with conventional electric
grid.
With the variety of applications of wind energy, short and long term research
program may be undertaken for the utilization of wind energy in Peninsular
Malaysia, especially in those areas where the wind speed is favorable. These
programmes may be started in accordance with the local needs, conditions and
facilities available.
If these problems are solved, wind energy may be harnessed to provide power in
many remote and isolated villages and areas, which are not electrified and where
the relatively small amount of power is needed. In view of encouraging results of
this study for future wind energy utilization, windmills and small scale wind
generations could be used to provide the basic needs which are not commensurate
to the requirements of main electrical supply.
96
APENDICES
Appendix A Predicted monthly basis hourly surface wind speed data
Table A1 Monthly basis hourly surface wind speed data at Butterworth in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 2.27 1.68 1.57 1.94 1.71 1.33 1.72 2.10 1.53 1.60 1.97 1.74 1.76
2 2.06 1.57 1.38 1.84 1.22 1.56 1.40 1.67 1.88 1.87 1.84 1.98 1.69
3 1.84 1.60 1.54 1.40 1.87 1.64 1.45 1.80 2.54 1.91 1.59 1.71 1.74
4 2.17 1.51 1.63 1.53 1.91 1.65 1.93 1.86 2.53 1.96 1.90 1.26 1.82
5 2.05 1.74 1.96 1.77 1.83 1.69 1.57 2.01 2.41 1.78 1.84 1.30 1.83
6 1.81 1.53 1.65 1.68 1.70 1.52 1.80 2.00 2.14 2.18 1.44 1.55 1.75
7 1.51 1.09 1.51 1.63 1.92 1.42 1.73 2.32 2.28 1.75 1.55 1.69 1.70
8 1.84 1.13 1.70 2.10 2.14 1.56 1.80 2.24 2.13 1.97 2.01 1.25 1.82
9 2.46 2.22 1.89 2.50 2.46 2.40 2.10 2.29 2.60 2.48 2.44 2.49 2.36
10 4.06 2.94 2.31 2.12 2.55 2.67 2.51 2.49 2.39 2.77 2.57 3.23 2.72
11 4.01 2.61 2.48 2.85 2.91 2.51 2.92 2.47 2.45 2.39 2.76 3.73 2.84
12 4.79 3.34 3.13 3.54 3.04 3.15 3.57 3.14 3.40 3.22 3.19 3.57 3.42
13 4.70 4.81 4.06 4.05 3.74 4.13 4.30 4.40 4.56 4.24 3.94 3.86 4.23
14 5.29 5.42 5.06 4.40 4.22 4.85 4.62 5.00 5.15 4.65 4.40 4.16 4.77
15 5.61 5.72 5.70 5.09 4.89 4.73 5.03 5.13 4.81 4.55 5.04 4.59 5.07
16 5.63 5.65 5.53 5.12 4.77 5.07 5.14 4.78 4.79 4.98 4.97 4.96 5.12
17 5.27 5.30 5.29 4.18 4.62 4.73 4.69 4.93 4.55 4.77 4.38 4.58 4.77
18 4.57 4.31 4.91 4.13 4.26 3.89 3.92 4.04 4.36 4.35 4.04 4.26 4.25
19 3.52 3.64 3.97 3.34 3.55 3.41 3.45 3.38 3.70 3.94 3.27 3.19 3.53
20 3.36 3.82 3.20 3.03 2.63 2.94 2.86 3.16 3.00 2.92 3.02 2.81 3.06
21 3.20 2.89 2.56 2.42 2.06 2.20 2.59 2.73 2.77 2.58 2.42 2.03 2.54
22 2.93 2.44 2.47 2.03 1.81 2.10 2.13 2.71 2.22 2.40 2.28 1.82 2.28
23 2.53 2.51 2.00 2.13 1.83 1.57 1.96 2.45 2.18 2.48 1.92 1.95 2.13
24 2.57 2.02 1.85 1.88 1.38 1.46 2.01 2.00 1.84 2.06 1.62 1.96 1.89
Monthly
Mean 3.34 2.98 2.89 2.78 2.71 2.67 2.80 2.96 3.01 2.91 2.77 2.74
97
Table A2 Monthly basis hourly surface wind speed data at Cameron Highland in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 2.83 2.82 3.95 2.21 1.87 2.03 1.49 1.12 3 2.71 2.32 2.75 2.43
2 2.65 2.94 3.56 2.27 1.51 2.36 1.54 1.27 3.13 2.59 2.01 3.13 2.41
3 2.69 2.54 3.08 2.22 1.79 2.13 1.19 1.22 2.64 2.7 2.29 3.06 2.30
4 2.97 3.1 3.41 2.11 1.61 2.09 1.49 1.19 3.1 2.4 1.99 2.66 2.34
5 2.95 3.17 3.4 2.15 1.95 1.91 1.62 1.32 3.84 2.6 1.85 2.93 2.48
6 2.97 3.29 3.38 2.03 1.7 2.07 1.41 1.51 3.24 2.78 1.74 2.34 2.37
7 2.99 3.46 3.8 2.15 1.97 1.75 1.48 1.69 3.16 2.85 1.56 2.88 2.48
8 3.04 3.56 3.79 2.03 1.77 1.67 1.36 1.55 2.97 2.48 1.61 2.89 2.39
9 3.16 3.61 4.09 2.07 1.76 1.84 1.36 1.4 2.93 2.52 2.07 2.78 2.47
10 3.63 4.24 4.07 2.48 2.31 2.29 1.51 2.34 3.67 2.87 2.37 3.15 2.91
11 3.95 4.46 4.3 2.49 2.56 2.73 2.31 2.25 3.85 2.86 2.61 3.3 3.14
12 3.63 4.15 3.95 2.71 3.01 2.97 2.51 2.48 3.82 3.33 2.59 3.29 3.20
13 3.26 4.21 3.93 2.86 3.14 3.17 2.65 2.8 3.64 3.38 2.61 2.96 3.22
14 3.29 3.56 3.89 2.98 3.41 3.22 2.84 3.08 3.77 3.13 2.41 2.74 3.19
15 2.91 3.45 3.57 2.54 3.13 2.97 2.56 2.91 3.73 2.79 2.44 2.26 2.94
16 2.52 3.29 3.78 2.23 3.21 2.63 2.43 2.53 3.66 2.84 2.26 1.9 2.77
17 2.49 3.28 3.63 1.71 2.52 2.93 2 2.31 3.21 2.29 1.89 2.45 2.56
18 2.63 3.12 3.73 1.52 2.18 2.27 2.16 1.97 2.98 2.36 1.61 2.52 2.42
19 2.27 3.38 3.37 1.68 1.64 1.85 1.5 1.26 2.72 1.99 1.65 2.52 2.15
20 2.48 3.24 3.75 1.77 1.6 1.88 1.51 1.35 2.56 2.21 1.74 2.74 2.24
21 3.11 3.28 3.4 1.79 1.64 1.77 1.35 1.3 2.79 2.22 2.04 2.68 2.28
22 3.13 3.52 3.6 2.02 1.58 1.87 1.61 1.48 2.81 2.27 2.23 2.55 2.39
23 3.01 3.63 3.79 2.2 1.82 1.75 1.78 1.18 2.73 2.29 1.95 2.57 2.39
24 2.75 3.44 3.44 2.04 1.71 2.02 1.55 1.41 2.81 2.48 1.85 2.48 2.33
Monthly
Mean 2.97 3.45 3.69 2.18 2.14 2.26 1.80 1.79 3.20 2.62 2.07 2.73
98
Table A3 Monthly basis hourly surface wind speed data at Cameron Highland in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 3.19 1.81 2.30 2.56 2.82 1.73 2.07 2.87 2.44 2.50 2.27 3.21 2.48
2 2.98 1.74 2.30 2.78 2.12 1.65 2.16 3.22 2.82 2.61 2.25 2.99 2.47
3 3.22 1.59 2.25 2.82 2.30 1.55 1.95 3.00 3.24 2.45 2.27 3.11 2.48
4 2.63 1.72 1.81 2.76 2.40 1.49 2.02 2.68 2.22 2.22 1.70 3.11 2.23
5 2.87 1.66 1.91 3.09 2.16 1.52 1.73 2.39 2.79 2.27 2.10 3.12 2.30
6 2.94 1.66 2.13 2.81 2.74 1.31 1.91 2.57 2.78 2.38 2.09 3.70 2.42
7 3.40 2.12 2.23 2.98 2.62 1.52 2.21 2.26 2.63 2.14 2.30 3.39 2.48
8 3.68 2.00 2.08 2.86 2.43 1.15 2.02 2.50 2.76 2.16 1.94 3.32 2.41
9 3.27 1.77 1.85 2.99 2.56 1.27 1.75 2.62 2.37 2.03 1.79 3.60 2.32
10 3.68 2.32 2.69 3.27 2.87 2.08 2.03 2.78 2.94 2.73 2.88 3.78 2.84
11 3.89 2.87 2.88 3.55 3.21 2.82 2.73 3.20 3.21 2.90 2.81 4.04 3.18
12 3.82 3.00 3.39 3.71 3.47 3.09 2.60 3.11 3.38 3.39 2.88 3.47 3.27
13 3.89 3.22 3.41 3.61 3.52 3.47 2.88 3.29 3.74 3.64 3.09 3.56 3.44
14 3.48 3.45 3.03 3.77 3.62 3.69 3.46 3.35 3.51 3.73 2.78 3.55 3.45
15 3.18 3.13 3.29 3.63 3.30 3.60 3.16 3.53 3.09 3.39 2.74 3.17 3.27
16 3.11 3.10 2.91 3.32 3.18 3.43 2.86 3.23 3.50 2.86 2.90 2.91 3.11
17 3.02 2.47 2.22 2.80 2.78 2.67 2.40 3.57 3.46 2.50 2.28 2.85 2.75
18 2.91 2.23 1.96 2.69 2.40 1.99 1.76 3.23 2.89 2.39 2.22 3.05 2.48
19 3.08 1.82 1.95 2.44 2.08 1.39 1.77 3.02 2.26 2.04 2.53 3.12 2.29
20 3.36 2.01 2.48 2.60 2.17 1.34 1.59 2.95 2.48 1.97 2.72 4.02 2.48
21 3.51 2.33 2.51 2.76 1.96 1.38 2.01 2.38 2.51 2.25 2.89 3.94 2.54
22 3.58 2.42 2.49 2.71 2.48 1.96 2.24 2.35 2.54 2.04 2.88 3.88 2.63
23 3.33 2.41 2.08 2.72 2.39 1.76 1.91 2.87 2.91 2.32 2.74 3.67 2.59
24 3.34 2.02 2.16 2.81 2.51 1.97 2.17 2.91 2.43 2.36 2.55 3.45 2.56
Monthly
Mean 3.31 2.29 2.43 3.00 2.67 2.08 2.22 2.91 2.87 2.55 2.48 3.42
99
Table A4 Monthly basis hourly surface wind speed data at Chuping in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 2.01 2.29 1.63 0.76 0.19 0.27 0.22 0.30 0.28 0.41 1.36 2.16 0.99
2 2.01 2.43 1.61 0.59 0.23 0.37 0.33 0.15 0.27 0.44 1.26 2.17 0.99
3 1.92 2.43 1.78 0.83 0.22 0.27 0.13 0.32 0.23 0.32 1.52 1.97 1.00
4 2.21 2.20 1.87 0.69 0.23 0.22 0.28 0.20 0.34 0.38 1.33 2.17 1.01
5 2.26 2.35 1.76 0.78 0.34 0.47 0.19 0.29 0.55 0.23 1.29 2.14 1.05
6 2.03 2.22 1.78 0.56 0.22 0.28 0.16 0.29 0.46 0.49 1.38 1.95 0.98
7 2.17 2.15 2.04 0.55 0.17 0.23 0.13 0.07 0.35 0.29 1.29 2.03 0.96
8 2.23 2.29 2.01 0.76 0.08 0.28 0.37 0.30 0.25 0.44 1.20 1.93 1.01
9 2.38 2.23 1.88 1.06 0.63 0.67 0.58 0.81 0.77 0.75 1.38 2.23 1.28
10 2.35 2.40 2.06 1.41 1.17 1.03 1.02 1.05 1.29 1.38 1.75 2.34 1.60
11 2.59 2.69 1.96 1.68 1.62 1.45 1.89 1.74 1.58 1.62 1.89 2.48 1.93
12 2.50 2.56 2.17 1.76 2.12 1.87 2.30 2.15 1.96 1.77 2.10 2.52 2.15
13 2.88 2.96 2.34 1.81 2.56 2.40 2.56 2.64 2.30 2.09 2.14 2.48 2.43
14 2.56 3.00 2.10 2.02 2.69 2.58 2.81 2.82 2.65 2.23 2.17 2.67 2.52
15 2.55 2.89 2.50 2.24 2.87 2.58 2.63 2.80 2.56 2.59 2.24 2.77 2.60
16 2.59 2.80 2.64 2.55 2.86 2.65 2.70 2.74 2.65 2.39 2.24 2.77 2.63
17 2.38 2.47 2.54 2.29 2.59 2.13 2.43 2.34 2.47 2.02 1.97 2.96 2.38
18 2.65 2.36 2.00 2.20 1.84 1.62 1.86 1.90 1.92 1.37 2.02 2.67 2.03
19 2.35 2.29 2.13 1.51 1.15 0.83 1.07 1.06 1.09 1.04 1.18 2.44 1.51
20 2.19 2.29 1.97 1.10 0.55 0.55 0.24 0.30 0.37 0.72 1.50 2.11 1.16
21 2.34 2.26 1.87 1.00 0.36 0.33 0.31 0.19 0.72 0.78 1.45 2.16 1.15
22 2.24 2.58 1.69 0.97 0.17 0.38 0.24 0.28 0.23 0.72 1.58 2.11 1.10
23 2.19 2.24 1.53 0.93 0.26 0.26 0.17 0.46 0.26 0.42 1.75 2.20 1.06
24 2.22 2.23 1.55 0.76 0.26 0.29 0.24 0.15 0.24 0.29 1.47 2.28 1.00
Monthly
Mean 2.33 2.44 1.98 1.28 1.06 1.00 1.04 1.06 1.08 1.05 1.64 2.32
100
Table A5 Monthly basis hourly surface wind speed data at Chuping in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 2.55 1.83 0.86 0.63 0.20 0.06 0.16 0.52 0.36 0.36 1.21 2.22 0.91
2 2.49 1.84 0.84 0.49 0.27 0.00 0.10 0.39 0.24 0.40 1.01 2.01 0.84
3 2.42 1.97 0.91 0.47 0.31 0.03 0.13 0.32 0.31 0.34 1.08 1.95 0.85
4 2.56 1.98 0.85 0.58 0.23 0.13 0.15 0.34 0.36 0.38 1.33 2.16 0.92
5 2.43 1.74 0.92 0.63 0.26 0.09 0.23 0.47 0.40 0.50 1.27 2.01 0.91
6 2.43 1.73 1.07 0.47 0.22 0.07 0.18 0.36 0.39 0.46 1.35 2.17 0.91
7 2.33 1.60 0.96 0.51 0.12 0.06 0.22 0.41 0.31 0.44 1.07 2.32 0.86
8 2.34 1.75 1.22 0.72 0.22 0.06 0.20 0.45 0.34 0.48 1.05 2.19 0.92
9 2.57 1.92 1.15 0.93 0.38 0.21 0.42 0.91 0.59 0.67 1.36 2.32 1.12
10 2.89 2.36 1.56 1.29 0.76 0.62 0.84 1.39 1.13 1.13 1.60 2.30 1.49
11 2.96 2.55 1.87 1.75 1.10 1.39 1.74 2.17 1.69 1.74 1.64 2.56 1.93
12 3.13 2.77 2.02 1.94 1.51 2.03 1.87 2.48 2.07 1.99 1.77 2.77 2.20
13 3.18 3.00 1.99 2.24 1.97 2.40 2.26 2.66 2.16 2.29 1.76 2.70 2.38
14 3.27 2.94 1.95 2.47 2.21 2.85 2.52 2.71 2.34 2.49 2.27 2.85 2.57
15 3.13 3.06 2.22 2.77 2.06 2.89 2.62 2.91 2.59 2.80 2.08 2.54 2.64
16 3.21 3.25 2.25 2.39 2.10 2.87 2.40 3.08 2.67 2.56 1.93 2.37 2.59
17 3.17 3.00 2.10 2.64 1.90 2.37 2.30 2.68 2.40 2.14 1.81 2.06 2.38
18 2.95 2.77 1.37 1.92 1.45 1.97 1.92 2.26 1.90 1.68 1.58 2.38 2.01
19 2.89 2.61 1.27 1.50 0.86 1.06 1.05 1.58 1.21 1.01 1.28 2.31 1.55
20 2.69 2.47 0.82 0.80 0.43 0.22 0.42 0.93 0.77 0.42 1.49 2.28 1.14
21 2.82 2.24 0.98 0.48 0.33 0.04 0.47 0.49 0.51 0.38 1.58 2.45 1.06
22 2.88 2.21 1.33 0.29 0.14 0.00 0.17 0.39 0.35 0.35 1.28 2.49 0.99
23 2.86 2.31 1.19 0.38 0.15 0.05 0.24 0.29 0.32 0.43 1.29 2.46 1.00
24 2.89 1.88 0.99 0.52 0.17 0.08 0.13 0.30 0.23 0.39 1.22 2.33 0.93
Monthly
Mean 2.79 2.33 1.36 1.20 0.81 0.90 0.95 1.27 1.07 1.08 1.47 2.34
101
Table A6 Monthly basis hourly surface wind speed data at Ipoh in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 1.63 1.75 1.74 1.79 1.98 1.55 1.75 2 1.88 1.82 1.9 1.93 1.81
2 2.05 2.11 1.51 2.47 1.78 1.57 1.94 2.04 1.8 1.95 1.63 1.56 1.87
3 2.13 2.36 1.74 2.19 1.78 1.74 2.21 2.01 1.97 2.02 1.82 1.79 1.98
4 2.30 2.56 1.55 2.19 1.87 1.74 2.22 2.19 2.43 1.95 1.67 2.14 2.07
5 2.12 2.44 1.48 2.08 2.11 1.71 2.08 2.11 2.55 1.75 1.55 2.34 2.03
6 2.06 2.24 1.74 2.09 1.94 1.43 2 2.52 2.42 2.19 1.32 2.36 2.03
7 2.66 2.7 1.66 2.11 2.11 1.91 1.88 2.38 2.15 1.91 1.61 2.34 2.12
8 3.36 3.1 1.65 2.38 2.09 2.14 2.32 2.18 2.5 2.09 1.83 2.55 2.35
9 4.21 3.97 2.64 3.23 2.7 3.05 2.79 2.68 3.23 2.65 2.92 3.45 3.13
10 3.29 4.75 2.56 2.91 2.56 2.58 2.45 2.63 3 2.33 2.93 3.71 2.97
11 2.38 3.82 1.91 2.16 2.04 1.54 1.85 1.99 2.16 1.75 2.27 3.06 2.25
12 2.51 2.6 1.86 2.26 2.08 1.95 2.61 2.69 2.53 2.17 1.94 2.33 2.29
13 2.89 2.49 2.35 2.62 2.71 2.41 3.18 3.1 2.84 2.31 1.92 2.03 2.57
14 3.17 2.63 2.66 2.63 3 2.99 3.35 3.66 3.78 2.67 2.65 2.11 2.94
15 3.05 2.53 2.87 3.26 2.87 3.21 3.4 3.85 3.17 3.11 2.8 2.49 3.05
16 3.44 2.89 2.56 3.45 3.38 2.31 3.51 3.52 3.34 3.07 3.75 2.92 3.18
17 3.17 3.1 2.86 2.91 2.88 2.58 2.73 4.25 3.12 3.23 2.99 2.24 3.00
18 2.53 3.57 3.29 2.29 2.74 2.33 2.58 3.38 2.21 2.47 2.86 2.47 2.73
19 2.13 3.97 2.46 2.01 2.04 1.78 2.36 2.36 2.3 1.85 1.92 2.12 2.28
20 2.05 2.4 1.73 1.66 1.55 1.21 1.59 1.92 1.76 1.43 1.16 1.79 1.69
21 1.75 1.51 1.39 1.49 1.4 1.21 1.64 1.65 1.35 1.48 1.27 2.02 1.52
22 1.44 1.28 1.06 1.59 1.58 1.57 1.81 1.51 1.59 1.91 1.43 1.92 1.56
23 1.72 1.15 1.35 1.85 1.54 1.12 1.72 1.68 1.62 1.84 1.71 1.61 1.58
24 1.08 1.5 1.41 1.67 1.67 1.27 1.96 1.56 1.72 2.04 1.5 1.5 1.57
Monthly
Mean 2.46 2.64 2.00 2.30 2.18 1.95 2.33 2.50 2.39 2.17 2.06 2.28
102
Table A7 Monthly basis hourly surface wind speed data at Ipoh in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 1.18 1.52 1.72 2.18 2.39 1.55 1.90 1.80 1.82 2.20 1.53 1.16 1.75
2 1.73 1.81 1.85 1.76 2.33 1.66 2.20 2.33 2.07 2.18 1.43 1.24 1.88
3 2.26 1.65 1.69 2.17 2.31 1.97 2.31 2.24 2.15 2.17 1.55 1.52 2.00
4 2.01 1.92 1.70 1.80 2.10 2.71 2.20 2.06 2.35 2.26 1.89 1.63 2.05
5 2.43 1.78 1.91 2.20 2.17 2.15 2.12 2.17 1.86 2.00 1.58 1.91 2.02
6 2.67 1.65 1.93 1.76 1.99 2.21 2.10 2.12 2.16 2.32 1.81 2.37 2.09
7 2.81 1.94 2.10 1.71 2.11 2.40 2.35 2.12 1.87 2.38 2.11 2.12 2.17
8 2.97 2.02 2.00 2.39 2.11 2.37 2.05 2.15 2.40 2.56 2.17 2.21 2.28
9 3.91 2.87 2.51 3.43 3.01 2.92 2.25 2.97 2.75 2.78 3.06 3.07 2.96
10 4.76 3.57 2.40 3.22 3.04 2.60 2.38 2.56 2.46 2.37 2.80 3.57 2.98
11 3.83 2.64 1.70 2.60 2.38 1.74 1.71 2.22 2.13 1.84 2.10 2.87 2.31
12 2.93 1.58 1.63 2.55 2.24 1.88 2.33 2.38 2.15 1.94 1.83 2.10 2.13
13 2.22 1.90 2.28 2.50 2.39 2.35 2.52 2.74 2.30 2.77 2.39 2.28 2.39
14 1.99 2.38 3.01 2.97 2.72 2.64 3.12 2.74 2.82 3.29 2.43 2.24 2.69
15 2.08 2.32 3.45 3.15 2.84 2.70 3.01 3.33 2.91 3.75 2.29 2.44 2.85
16 2.68 2.95 4.25 3.50 3.04 2.89 3.30 3.13 2.84 4.34 2.63 2.70 3.19
17 3.88 2.99 3.93 3.80 2.91 2.78 2.92 3.58 2.62 3.50 2.71 2.61 3.18
18 2.12 3.29 3.60 3.19 2.78 2.77 2.26 3.26 2.45 3.10 1.90 2.25 2.75
19 2.43 3.45 2.65 2.08 2.32 2.46 2.18 2.39 2.05 1.87 2.19 1.80 2.32
20 1.69 1.66 2.24 2.09 1.66 1.84 1.63 1.96 1.47 1.95 1.44 1.13 1.73
21 1.39 1.06 1.66 1.83 1.51 1.59 1.34 1.79 1.52 1.52 1.23 0.82 1.44
22 1.12 0.75 1.48 1.79 1.71 1.42 1.41 1.62 1.89 2.00 1.23 0.63 1.42
23 1.20 0.60 1.54 1.46 1.98 1.23 1.73 1.89 1.78 2.09 1.42 0.35 1.44
24 1.09 1.13 1.62 1.47 2.21 1.77 1.91 2.02 1.46 1.90 1.59 0.71 1.57
Monthly
Mean 2.39 2.06 2.29 2.40 2.34 2.19 2.22 2.40 2.18 2.46 1.97 1.91
103
Table A8 Monthly basis hourly surface wind speed data at Kuala Terenganu in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 2.63 2.94 2.47 1.39 1.65 1.84 1.96 2.19 1.96 1.78 1.94 2.67 2.12
2 2.46 3.05 2.34 1.67 1.64 1.76 1.79 2.17 2.06 1.86 1.99 2.42 2.10
3 2.62 2.71 2.34 1.93 1.75 1.76 1.67 1.87 1.93 1.80 1.90 2.43 2.06
4 2.49 2.60 2.56 1.82 1.95 1.83 1.83 1.82 1.91 1.82 1.89 2.36 2.08
5 2.41 2.31 2.29 1.89 1.79 2.00 1.77 2.34 1.98 1.66 1.99 2.61 2.09
6 2.35 2.14 2.45 1.91 1.70 2.03 1.85 1.65 2.06 1.76 1.56 2.57 2.00
7 2.36 2.13 2.44 1.75 1.99 2.08 1.73 2.03 1.60 1.82 1.58 2.50 2.00
8 2.38 2.33 2.74 2.17 2.00 2.05 1.99 2.16 2.05 1.98 1.64 2.53 2.17
9 2.48 2.60 3.06 2.41 2.34 2.59 2.48 2.40 2.44 2.31 1.96 2.48 2.46
10 2.74 3.10 3.18 2.44 2.05 2.55 2.62 2.48 2.27 2.21 2.08 3.27 2.58
11 3.18 3.86 3.82 2.21 2.07 2.49 2.49 2.18 2.53 2.13 2.19 3.57 2.73
12 3.85 4.36 4.17 3.14 2.69 3.23 2.69 2.80 2.84 3.18 2.43 3.92 3.28
13 4.35 4.74 4.52 3.61 2.91 3.29 3.16 3.15 3.29 3.60 2.60 4.10 3.61
14 4.59 4.91 4.86 3.86 3.38 3.42 3.20 3.36 3.60 3.71 3.03 4.29 3.85
15 4.21 4.54 4.87 4.09 3.29 3.54 3.27 3.71 3.64 3.88 3.15 4.10 3.86
16 4.37 4.63 4.80 3.98 3.10 3.05 3.43 3.58 3.23 3.60 3.03 4.04 3.74
17 4.30 4.44 4.58 3.71 2.88 2.87 3.05 3.39 2.97 3.13 2.79 3.89 3.50
18 4.08 4.07 3.99 3.02 2.05 2.46 2.57 2.91 2.54 2.77 2.24 3.65 3.03
19 3.83 3.67 3.50 2.04 1.84 2.13 2.19 2.28 1.97 2.19 1.83 3.71 2.60
20 3.83 3.43 2.98 1.75 1.54 1.87 1.94 2.01 1.89 2.18 2.19 3.31 2.41
21 3.40 3.46 2.74 1.48 1.61 1.87 1.96 1.96 1.82 1.80 2.15 3.27 2.29
22 3.27 3.43 2.64 1.47 1.88 1.79 1.67 1.88 1.59 1.72 1.92 3.25 2.21
23 3.14 3.31 2.65 1.25 1.85 1.85 1.83 1.55 1.90 1.82 2.16 2.97 2.19
24 3.15 3.00 2.52 1.62 1.58 1.62 1.95 2.23 1.93 1.62 2.09 2.95 2.19
Monthly
Mean 3.27 3.41 3.27 2.36 2.15 2.33 2.30 2.42 2.33 2.35 2.18 3.20
104
Table A9 Monthly basis hourly surface wind speed data at Kuala Terenganu in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 3.23 1.71 2.08 2.09 1.73 1.71 1.88 1.69 1.65 1.79 1.96 3.45 2.08
2 3.19 1.72 1.93 1.85 2.19 2.07 1.67 1.92 1.77 1.95 2.60 3.22 2.17
3 2.76 1.51 2.06 1.82 2.02 2.08 1.74 1.74 1.97 1.66 2.69 3.17 2.10
4 2.74 1.47 1.87 1.98 2.02 1.87 1.57 1.70 2.10 1.65 2.69 3.39 2.09
5 2.70 1.48 1.72 1.79 2.21 1.81 1.87 1.93 1.87 1.52 2.41 3.19 2.04
6 2.67 1.51 1.83 1.88 1.95 1.96 1.87 2.07 1.73 1.59 2.45 3.13 2.05
7 2.40 1.68 1.96 1.77 1.81 1.83 1.91 1.90 1.61 1.69 2.45 2.95 2.00
8 2.49 1.82 1.86 1.94 2.04 2.20 2.17 2.05 1.90 2.05 2.67 3.07 2.19
9 3.01 1.88 2.17 2.21 2.49 2.50 2.45 2.40 2.26 2.21 2.66 2.97 2.43
10 3.12 1.82 1.91 2.27 2.52 2.62 2.52 2.53 2.10 2.15 2.72 3.41 2.47
11 3.55 2.66 2.48 2.31 2.08 2.28 2.52 2.44 2.05 2.00 3.12 3.95 2.62
12 3.89 3.76 2.90 2.78 2.70 3.18 3.08 3.25 2.60 2.70 3.29 4.35 3.21
13 4.16 4.19 3.61 3.35 3.43 3.61 3.51 3.73 3.35 3.31 3.43 4.27 3.66
14 4.17 4.35 4.00 3.51 3.74 4.12 3.84 4.24 3.60 3.55 3.18 4.43 3.90
15 4.13 4.41 4.31 3.58 3.76 4.20 3.92 4.22 3.49 3.35 3.24 4.47 3.92
16 4.38 4.42 4.32 3.60 3.53 3.72 3.90 4.26 3.28 3.15 3.41 4.46 3.87
17 4.31 4.14 3.73 3.26 3.27 3.43 3.81 3.88 2.83 2.62 3.30 4.42 3.58
18 4.20 3.78 3.21 2.54 2.56 2.95 3.09 3.44 2.20 2.29 2.80 4.04 3.09
19 3.91 3.22 2.66 2.29 2.48 2.31 2.39 2.68 1.88 2.12 2.57 3.86 2.70
20 3.93 2.80 2.30 1.79 1.63 2.09 2.32 2.60 1.39 1.71 2.32 3.76 2.39
21 3.73 2.29 2.14 1.57 2.30 1.68 1.81 2.11 1.69 1.88 2.15 3.65 2.25
22 3.56 1.96 2.16 1.61 1.75 1.95 1.72 1.78 1.69 2.24 2.21 3.67 2.19
23 3.56 1.81 2.00 1.96 1.70 1.82 1.87 2.02 1.75 2.19 2.25 3.67 2.22
24 3.40 1.72 1.99 1.82 1.69 1.81 2.18 1.91 1.58 1.69 2.57 3.58 2.16
Monthly
Mean 3.47 2.59 2.55 2.31 2.40 2.49 2.48 2.60 2.18 2.21 2.71 3.69
105
Table A10 Monthly basis hourly surface wind speed data at KLIA Sepang in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 2.88 2.81 2.1 1.94 1.79 1.68 2.59 2.08 1.83 1.93 1.19 1.99 2.07
2 2.74 2.92 2.13 1.66 1.43 1.85 2.16 1.96 1.86 1.79 1.17 1.81 1.96
3 2.37 2.8 2.23 1.64 1.3 1.75 2.23 2.22 1.71 1.6 1 1.81 1.89
4 2.8 2.35 1.49 1.69 1 1.9 1.83 1.78 1.5 1.26 1.11 1.91 1.72
5 2.09 2.52 1.65 1.81 1.41 1.6 2.03 1.87 1.51 1.42 1.09 1.64 1.72
6 2.13 2.41 1.09 1.59 1.22 1.74 1.69 1.74 1.53 1 1.02 1.5 1.55
7 1.91 2.69 1.59 1.46 1.5 1.76 1.99 1.45 1.58 1.25 1.02 1.3 1.63
8 1.64 2.96 1.55 1.69 1.75 2.02 1.65 1.62 1.46 1.46 1.54 1.42 1.73
9 2.19 3.24 2.02 2.27 2.12 2.23 2.49 2.33 1.84 2.09 1.81 2.09 2.23
10 2.39 3.56 2.96 1.9 2.36 2.83 3.37 3.26 2.37 2.42 2.06 2.86 2.69
11 3.26 3.87 3.39 2.14 3.04 3.2 3.81 3.63 2.99 2.58 2.55 2.96 3.12
12 3 3.95 3.41 2.32 3.39 3.22 3.63 3.59 3.51 2.9 2.41 2.97 3.19
13 3.37 3.57 3.6 2.84 3.62 3.59 3.95 4.1 3.77 3.07 2.75 2.92 3.43
14 3.42 3.49 3.78 3.07 3.52 3.73 4.07 4.25 3.86 3.02 2.73 3.01 3.5
15 4.1 3.59 3.6 3.15 3.55 3.69 4.06 4.08 3.63 3.28 3 2.95 3.56
16 3.17 3.68 3.21 3.26 3.27 3.66 3.61 4 3.41 3.04 2.95 3.12 3.37
17 3.03 3.65 3.07 2.88 2.63 2.97 3.33 3.86 3.04 2.49 2.4 2.74 3.01
18 2.7 2.56 2.69 2.7 2.09 2.35 2.57 3.3 2.51 2.12 2.34 2.35 2.52
19 2.23 1.72 2.57 2.5 1.85 2.27 2.46 2.61 2.15 1.94 2.16 1.8 2.19
20 2.09 1.94 2.08 2.29 2.09 2.15 2.31 2.31 2.03 2.3 1.99 1.45 2.09
21 2.31 1.68 1.89 2.15 2.04 1.91 2.47 2.43 1.95 1.9 2.02 1.47 2.02
22 2.72 2.08 2.56 1.68 1.86 1.88 2.49 2.46 1.77 2.04 1.78 1.35 2.06
23 2.6 2.34 2.27 1.77 1.56 2.01 2.26 2.48 1.9 2.07 1.76 1.59 2.05
24 2.83 2.69 2.34 1.82 1.81 1.77 2.39 2.21 1.81 1.62 1.73 1.93 2.08
Monthly
Mean 2.67 2.88 2.47 2.18 2.18 2.41 2.73 2.73 2.31 2.11 1.9 2.12
106
Table A11 Monthly basis hourly surface wind speed data at KLIA Sepang in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 2.91 1.42 1.62 1.20 1.24 1.33 1.61 1.68 1.27 1.22 0.39 1.87 1.48
2 2.94 1.25 1.51 1.20 1.42 1.02 1.81 1.36 1.49 1.49 0.79 2.13 1.53
3 2.41 0.99 1.26 1.29 1.67 1.13 1.49 1.2 1.45 1.3 0.9 1.52 1.38
4 2.23 0.83 0.88 1.24 1.65 1.40 2.04 1.06 1.25 1.16 0.91 1.81 1.37
5 2.25 0.81 1.01 1.44 1.53 1.14 1.69 1.46 1.37 1.03 1.07 1.47 1.36
6 2.15 1.14 0.88 1.41 1.38 0.93 2.00 1.10 1.39 0.97 0.72 1.20 1.27
7 2.39 0.67 1.37 1.16 1.43 1.03 1.45 1.56 0.98 1.23 0.76 0.98 1.25
8 2.29 1.18 1.29 1.21 1.26 1.09 1.80 1.24 1.08 1.35 0.98 1.36 1.34
9 2.89 2.27 1.44 1.71 1.89 1.46 2.59 1.87 1.73 1.93 1.64 2.00 1.95
10 3.89 2.43 1.85 2.46 2.84 2.15 3.13 2.22 2.30 2.18 2.00 2.26 2.48
11 4.27 2.50 2.01 2.74 3.05 2.41 3.36 2.93 2.23 2.21 2.25 2.81 2.73
12 4.03 2.64 2.44 2.93 3.13 2.81 3.66 3.07 2.72 2.44 2.64 2.33 2.9
13 4.15 2.93 2.78 3.16 3.35 2.84 3.78 3.37 2.67 2.74 2.82 2.65 3.1
14 3.81 2.86 2.91 3.39 3.24 3.17 3.99 3.48 2.97 2.96 2.53 2.63 3.16
15 3.69 3.22 3.21 3.47 3.6 3.12 3.78 3.64 3.09 3.02 3.28 2.76 3.32
16 3.48 3.39 2.44 3.44 3.88 2.79 3.47 3.4 2.83 2.85 2.62 2.85 3.12
17 2.96 3.04 2.99 2.93 3.5 2.42 3.35 3.08 2.37 2.37 2.69 2.53 2.85
18 2.83 2.73 2.56 2.85 2.53 1.68 2.5 2.61 1.63 1.48 2.08 2.23 2.31
19 2.05 1.79 1.95 1.88 1.7 0.78 1.85 2.15 1.52 1.25 1.77 1.66 1.70
20 1.60 1.66 1.80 1.87 1.46 1.28 1.84 2.05 1.83 1.47 1.95 2.00 1.73
21 2.16 1.29 2.22 1.58 1.51 1.32 1.79 2.00 1.99 1.66 1.65 2.19 1.78
22 2.06 1.63 1.92 1.67 1.55 1.07 1.66 1.85 1.52 1.77 1.54 1.95 1.68
23 2.50 1.81 1.57 1.66 1.69 0.82 1.76 1.94 1.32 1.45 0.99 1.50 1.58
24 2.69 1.50 1.58 1.43 1.60 1.06 1.91 1.69 1.07 1.43 0.95 1.56 1.54
Monthly
Mean 2.86 1.92 1.90 2.05 2.17 1.68 2.43 2.17 1.84 1.79 1.66 2.01
107
Table A12 Monthly basis hourly surface wind speed data at Kota Bharu in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 2.37 3.8 3.81 1.62 1.22 1.63 1.83 2.22 1.43 1.85 1.3 2.68 2.15
2 2.21 3.49 3.22 1.92 1.34 1.66 1.62 2.13 1.65 1.87 1.7 2.19 2.08
3 2.36 3.13 3.16 1.77 1.1 1.76 2.02 2.38 1.64 1.83 1.65 2.22 2.09
4 2.39 2.94 2.96 2.05 1.2 1.62 1.95 2 1.76 1.7 1.41 2.07 2
5 1.9 2.07 2.87 2.01 1.15 1.77 2.05 1.92 1.69 1.66 1.19 1.73 1.83
6 1.79 1.87 2.5 1.68 1.27 1.6 1.99 2.14 1.7 1.84 1.46 1.68 1.79
7 1.69 1.91 2.78 1.78 1.11 1.6 2.19 2.26 2.04 2.04 1.31 1.64 1.86
8 1.97 1.86 3.16 2.17 2 2.24 2.25 2.51 2.08 2.37 1.67 1.96 2.19
9 2.63 2.81 4.12 3.21 2.47 2.88 3.13 3.34 2.98 2.78 2.23 2.57 2.93
10 3.59 3.77 4.79 3.3 2.79 3.05 3.78 3.76 3.41 3.31 2.43 3 3.42
11 4.34 4.96 5.6 3.15 2.62 2.86 3.45 3.67 3.38 2.81 2.36 3.8 3.58
12 5.04 5.96 6.4 3.85 2.52 3 3.22 3.14 3.64 3.39 3 3.74 3.91
13 5.3 6.32 6.76 4.75 3.21 3.58 3.46 3.61 4.29 4.12 3.13 3.92 4.37
14 5.28 6.57 6.69 4.99 3.99 4.03 3.7 4.35 4.5 4.49 3.29 4.02 4.66
15 5.65 6.55 6.93 5.15 4.16 4.24 4.42 4.25 4.47 4.47 3.43 3.93 4.8
16 5.45 6.57 7.04 5.38 4.13 4.32 4.32 4.43 4.72 4.64 3.4 3.98 4.87
17 5.35 6.72 6.89 4.86 4.37 4.21 4.23 4.52 4.54 3.92 3.03 3.73 4.7
18 5.29 6.02 6.35 4.68 3.71 3.76 3.98 4.02 3.49 3.6 2.57 3.27 4.23
19 4.31 5.35 5.73 3.64 3.2 3.35 3.67 3.5 2.5 2.67 1.87 3.43 3.6
20 3.73 4.74 4.95 2.99 2.15 2.43 2.97 2.63 1.97 2.56 1.82 2.84 2.98
21 3.79 4.84 4.56 2.78 1.51 1.86 2.19 2.14 1.58 2.12 1.85 2.96 2.68
22 3.64 4.68 4.13 2.37 1.37 2.79 2.22 2.14 1.96 1.91 2.16 2.89 2.69
23 3.12 4.38 3.82 2.13 1.45 2.17 1.87 1.97 1.44 2.08 1.69 2.54 2.39
24 2.88 4.11 3.89 1.42 1.79 1.73 2.12 2.5 1.39 1.77 1.59 2.6 2.32
Monthly
Mean 3.59 4.39 4.71 3.07 2.33 2.67 2.86 2.98 2.68 2.74 2.15 2.89
108
Table A13 Monthly basis hourly surface wind speed data at Kota Bharu in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 2.21 1.38 1.12 1.58 2.2 1.49 2.05 1.92 1.14 1.81 1.94 3.26 1.84
2 2.16 1.34 0.95 1.36 2.02 1.58 1.78 1.73 1.2 1.77 2.3 3.21 1.78
3 2.15 1.21 0.96 1.75 2.01 1.62 1.7 1.61 1.58 1.85 1.99 2.65 1.76
4 1.91 0.95 1.16 1.72 2.01 1.7 1.79 1.46 1.35 1.9 2.42 2.78 1.76
5 1.81 1.05 1.11 1.45 2.16 1.69 1.8 1.65 1.63 1.92 2.53 2.28 1.76
6 1.65 0.97 1.34 1.62 1.95 1.83 1.96 1.78 1.66 1.78 2.29 2.47 1.77
7 1.64 1.1 1.14 1.67 1.99 1.86 2.22 1.65 1.53 2.04 2.32 2.32 1.79
8 1.74 1.26 1.18 1.86 2.32 2.35 2.46 2 1.88 2.36 2.65 2.48 2.05
9 2.18 2.02 1.86 2.72 2.81 3.11 2.99 2.64 2.54 2.98 3.52 3.12 2.71
10 3.01 2.54 2.39 2.98 3.17 3.37 3.39 3.2 2.76 3.09 3.47 3.95 3.11
11 3.85 3.34 2.76 2.87 3.06 3.04 3.3 3.26 3.13 2.86 2.97 4.86 3.27
12 4.93 4.64 3.26 3.23 2.87 3.16 3.1 3.29 2.86 3.23 3.14 5.44 3.6
13 5.05 5.42 4.13 4.12 3.56 3.42 3.84 3.99 3.46 3.35 3.85 5.18 4.11
14 5.08 5.54 4.18 4.35 3.98 3.79 4.26 4.38 3.55 3.79 3.72 5.78 4.37
15 5.24 5.68 4.6 4.71 4.15 3.85 4.22 4.95 3.69 4.13 3.81 5.68 4.56
16 5.03 5.56 4.86 4.77 4.64 3.65 4.26 4.57 3.72 4.57 3.56 5.61 4.57
17 5.03 5.41 4.87 4.54 4.34 3.73 4.13 4.24 3.85 4.32 3.31 5.61 4.45
18 4.79 5 4.46 4.09 4.04 3.6 3.88 4.32 3.2 3.48 3.15 5.4 4.12
19 4.64 4.2 3.13 3.16 3.47 2.54 3.22 3.2 2.12 2.57 2.48 4.66 3.28
20 3.76 3.41 2.52 2.75 2.51 1.94 2.26 2.55 2.06 1.73 2.35 4.43 2.69
21 3.79 2.95 2.2 2.75 2.34 1.88 2.33 2.1 1.59 1.94 2.72 4.33 2.58
22 3.6 2.66 1.73 1.98 2.29 1.7 2.49 1.95 1.63 1.42 2.47 4.05 2.33
23 3.15 2.58 1.09 1.85 2.09 1.26 1.98 1.71 1.61 1.88 2.2 4.34 2.15
24 2.44 2.14 1.52 1.77 2.22 1.57 1.88 2.02 1.44 2.07 1.99 3.59 2.06
Monthly
Mean 3.37 3.01 2.44 2.73 2.84 2.49 2.8 2.76 2.3 2.62 2.8 4.06
109
Table A14 Monthly basis hourly surface wind speed data at Kuala Krai in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 0.78 0.69 0.75 1.1 1.03 1 1.13 1.11 0.69 1.06 0.62 0.56 0.88
2 0.63 0.69 0.59 0.9 1.04 0.85 1.03 0.99 0.79 0.71 0.4 0.67 0.77
3 0.69 0.65 0.6 0.83 0.88 1.06 1.02 0.92 0.57 0.77 0.41 0.5 0.74
4 0.53 0.77 0.6 0.82 0.7 0.99 1.09 0.98 0.54 0.81 0.47 0.47 0.73
5 0.55 0.71 0.41 0.92 0.89 1 1.12 0.87 0.72 0.72 0.28 0.64 0.74
6 0.7 0.74 0.56 0.99 0.92 0.91 1.17 0.99 0.63 0.86 0.31 0.6 0.78
7 0.54 0.65 0.72 0.95 1.04 0.97 1.18 1.06 0.62 0.84 0.57 0.55 0.81
8 0.54 0.57 0.75 0.87 0.79 1.14 1.23 1.16 0.73 1.11 0.57 0.63 0.84
9 0.7 0.91 0.77 1.38 1.26 1.27 1.45 1.34 0.96 1.23 0.65 0.6 1.04
10 0.94 1.26 1.13 1.57 1.52 1.48 2.17 1.91 1.31 1.71 0.84 0.82 1.39
11 1.15 1.41 1.34 1.73 1.68 1.94 2.41 2.08 1.35 1.63 0.96 1.05 1.56
12 1.3 1.76 1.54 1.74 1.76 2 2.42 2.42 1.55 1.5 1.14 1.3 1.7
13 1.66 1.89 1.87 1.76 1.88 1.96 2.48 2.37 1.38 1.82 1.24 1.67 1.83
14 1.86 2.02 2.03 2.12 1.88 1.99 2.34 2.24 1.71 1.72 1.62 1.65 1.93
15 1.98 1.97 2.15 2.43 1.63 1.71 2.41 1.99 1.47 2.02 1.82 1.76 1.94
16 2.02 2.4 2.38 2.65 1.6 1.46 1.69 1.94 1.59 2.08 1.71 2.05 1.96
17 1.91 2.29 2.47 2.2 1.93 1.89 1.5 1.9 1.48 1.66 1.75 1.8 1.9
18 2.05 2.23 2.16 1.83 1.79 1.29 1.36 2.24 1.36 1.58 1.34 1.51 1.73
19 1.81 1.95 1.74 1.54 2.05 1.7 1.96 1.92 1.19 1.75 1.42 1.28 1.69
20 1.78 1.85 1.6 1.57 1.62 1.58 1.83 1.79 1.12 1.61 1.13 1.32 1.57
21 1.57 1.82 1.29 1.22 1.42 1.93 1.6 1.87 1.19 1.42 1.07 1.08 1.46
22 1.3 1.53 1.36 1.31 1.41 1.22 1.48 1.62 1.07 1.26 0.61 1.04 1.27
23 0.99 1.13 0.99 1.05 1.22 1.09 1.24 1.08 0.82 1.19 0.51 0.76 1.01
24 0.87 1.09 0.85 1.02 1 1.19 1.07 1.09 0.83 0.73 0.63 0.76 0.93
Monthly
Mean 1.2 1.37 1.28 1.44 1.37 1.4 1.6 1.58 1.07 1.32 0.92 1.04
110
Table A15 Monthly basis hourly surface wind speed data at Kuala Krai in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 0.72 0.74 0.89 0.88 0.96 0.95 0.78 0.83 0.82 0.69 0.7 0.79 0.81
2 0.69 0.64 0.87 0.73 0.89 0.93 0.75 0.89 0.7 0.77 0.55 0.61 0.75
3 0.45 0.54 0.78 0.69 0.85 1 1 0.72 0.67 0.66 0.53 0.5 0.7
4 0.47 0.61 0.78 0.53 0.84 0.87 0.83 0.7 0.84 0.78 0.61 0.52 0.7
5 0.47 0.46 0.81 0.76 0.96 0.78 0.82 0.75 0.75 0.51 0.62 0.39 0.67
6 0.5 0.58 0.68 0.88 0.9 0.72 0.68 0.76 0.66 0.62 0.61 0.41 0.67
7 0.58 0.4 0.74 0.81 0.81 0.99 0.98 0.89 0.55 0.72 0.6 0.35 0.7
8 0.53 0.55 0.83 0.59 0.8 1.11 1.07 1.03 0.7 0.83 0.74 0.52 0.78
9 0.55 0.6 1.02 1.28 0.98 1.14 1.34 1.3 0.75 1 0.88 0.55 0.95
10 0.96 0.87 1.29 1.23 1.48 1.5 1.56 1.62 1.19 1.06 1.16 0.82 1.23
11 1.21 1.21 1.39 1.51 1.67 1.72 1.98 1.84 1.36 1.29 1.08 0.99 1.44
12 1.38 1.55 1.41 1.48 1.61 1.77 2.32 1.94 1.39 1.49 1.47 1.27 1.59
13 1.75 1.89 1.8 1.63 1.64 2.02 2.14 1.98 1.45 1.56 1.37 1.46 1.72
14 1.98 2.15 1.91 1.55 1.61 1.95 2.1 2.02 1.66 1.69 1.52 1.86 1.83
15 2.2 2.48 2.06 1.76 1.55 1.72 1.76 1.95 1.24 1.43 1.54 1.66 1.78
16 1.96 2.47 2.44 1.66 1.88 1.7 1.56 1.75 1.21 1.48 1.53 1.89 1.8
17 2.08 2.26 1.93 1.75 1.4 1.49 1.74 2.01 1.34 2.48 1.49 1.7 1.81
18 1.82 1.9 1.97 1.48 1.84 1.35 1.45 1.68 1.41 1.15 0.99 1.6 1.55
19 1.62 2.06 1.78 1.58 1.41 1.49 1.53 1.43 1.26 1.6 0.95 1.43 1.51
20 1.74 2.01 1.54 1.32 1.54 1.54 1.61 1.54 1.63 1.38 0.94 1.48 1.52
21 1.58 1.94 1.55 1.05 1.16 1.68 1.36 1.14 1.17 1.06 0.9 1.25 1.32
22 1.05 1.71 1.28 1.12 1.13 1.6 1.56 0.98 1.14 0.76 0.7 1.17 1.18
23 1.11 1.17 0.96 0.79 0.91 1.07 1.27 0.77 0.9 0.74 0.7 0.66 0.92
24 0.66 0.95 0.95 0.79 0.81 1.04 1.03 0.82 0.67 0.48 0.62 0.68 0.79
Monthly
Mean 1.17 1.32 1.32 1.16 1.23 1.34 1.38 1.3 1.06 1.09 0.95 1.02
111
Table A16 Monthly basis hourly surface wind speed data at Kuantan in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 1.43 1.56 1.31 0.82 1.09 1.22 1.10 0.80 1.07 0.87 0.89 1.24 1.12
2 1.57 1.64 1.13 0.77 0.99 0.95 0.84 0.83 1.05 0.73 1.04 1.21 1.06
3 1.59 1.65 1.10 0.40 1.12 0.90 0.94 0.90 1.01 0.72 0.71 1.18 1.02
4 1.69 1.56 0.92 0.49 0.77 0.50 1.09 1.14 1.08 0.51 0.99 1.22 1.00
5 1.62 1.53 1.02 0.50 0.57 0.76 1.13 1.13 1.01 0.81 1.04 1.15 1.02
6 1.72 1.32 1.10 0.38 0.55 0.92 1.27 1.13 0.81 0.48 0.88 1.07 0.97
7 1.63 1.17 1.03 0.49 0.58 0.70 1.18 1.01 0.73 0.70 0.63 1.08 0.91
8 1.57 1.19 1.23 0.57 0.64 1.40 0.96 1.20 0.94 0.89 0.71 1.31 1.05
9 2.28 2.16 1.77 1.10 1.13 1.67 1.60 1.65 1.73 0.92 1.15 1.88 1.59
10 2.63 2.62 2.30 1.93 2.69 2.96 2.98 2.91 2.55 1.57 1.71 2.40 2.44
11 3.01 3.08 2.52 2.50 3.41 3.24 3.85 3.79 3.60 2.04 2.12 3.39 3.05
12 3.07 3.36 3.38 2.59 3.66 3.48 4.04 3.99 4.09 2.19 2.34 3.16 3.28
13 3.35 4.02 4.17 3.09 3.65 3.54 3.95 3.85 3.78 2.67 2.64 3.29 3.50
14 4.14 4.58 4.79 3.05 3.73 3.74 3.76 3.89 3.67 3.12 2.75 3.13 3.70
15 4.48 4.82 5.14 3.81 3.36 3.62 3.54 4.13 3.86 3.13 3.03 3.37 3.86
16 4.85 5.29 5.65 4.24 3.86 4.06 3.95 3.97 3.83 3.86 3.19 3.37 4.18
17 4.46 5.21 5.42 3.88 4.24 3.97 4.14 4.20 4.15 3.69 2.80 3.13 4.11
18 4.04 4.41 4.57 3.63 3.90 3.73 3.79 4.15 3.62 2.99 2.59 2.97 3.70
19 3.01 3.84 3.17 2.40 2.46 3.79 2.51 3.34 2.39 1.98 1.55 2.30 2.73
20 1.85 2.51 2.07 1.14 1.62 2.03 2.23 2.44 1.99 1.37 1.91 1.70 1.91
21 1.74 1.61 1.38 0.83 1.52 1.55 1.66 1.67 1.90 1.98 1.44 1.47 1.56
22 1.50 1.70 1.50 1.34 1.56 1.58 1.31 1.51 1.57 1.54 1.08 1.38 1.47
23 1.69 1.65 1.31 1.11 1.25 1.35 1.02 1.12 1.64 1.02 1.26 1.29 1.31
24 1.47 1.62 1.16 0.92 1.12 1.44 1.10 1.30 1.15 0.98 1.00 1.36 1.22
Monthly
Mean 2.52 2.67 2.46 1.75 2.06 2.21 2.25 2.33 2.22 1.70 1.64 2.04
112
Table A17 Monthly basis hourly surface wind speed data at Kuantan in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 1.20 0.98 1.15 1.12 1.49 1.33 0.99 0.92 1.36 1.48 0.73 1.33 1.17
2 1.44 1.09 1.07 0.81 1.11 1.17 1.12 0.76 0.95 1.12 0.90 1.27 1.07
3 1.26 0.83 1.07 0.79 1.24 1.32 1.13 0.78 1.11 1.17 1.14 1.35 1.10
4 1.52 0.91 1.20 0.78 0.89 0.86 1.14 0.94 0.91 1.08 1.04 1.42 1.06
5 1.46 0.97 0.98 0.78 0.81 0.83 1.01 0.90 0.90 0.91 0.86 1.28 0.98
6 1.52 0.75 0.87 0.89 0.99 0.89 0.91 0.79 1.07 0.83 0.71 1.51 0.98
7 1.42 0.72 0.73 0.79 1.08 1.14 1.10 0.86 1.06 0.69 0.78 1.35 0.98
8 1.56 0.73 0.71 0.96 1.03 0.72 1.12 0.91 1.33 0.98 1.09 1.31 1.04
9 2.08 1.42 1.42 1.09 1.01 1.58 1.58 1.42 1.94 0.94 1.51 2.05 1.50
10 3.13 2.34 1.91 2.01 1.58 2.86 2.94 2.57 2.67 1.95 1.58 2.71 2.35
11 3.56 3.02 2.11 2.76 2.03 3.16 3.54 3.24 3.68 2.74 2.11 3.01 2.91
12 3.95 3.25 2.35 2.70 2.31 3.49 3.81 3.73 3.86 3.19 2.10 2.93 3.14
13 4.39 3.32 2.78 2.81 2.61 3.68 4.13 3.68 4.16 3.79 2.73 3.21 3.44
14 4.14 3.58 3.34 3.26 3.18 3.39 4.29 4.21 4.05 3.65 2.95 3.82 3.65
15 4.79 4.59 3.88 4.10 3.54 3.65 3.91 4.01 3.90 3.65 3.06 4.03 3.93
16 4.77 4.73 4.63 4.58 3.45 4.06 3.45 4.38 3.64 4.02 3.09 3.69 4.04
17 4.45 4.86 4.22 4.39 3.39 3.88 3.82 4.12 4.04 3.78 2.82 3.55 3.94
18 4.11 4.45 3.46 3.65 3.09 3.55 3.69 4.06 3.55 3.15 2.27 3.08 3.51
19 3.43 3.17 2.94 2.16 2.19 2.98 2.86 2.91 2.59 2.47 1.63 2.28 2.63
20 2.39 2.01 1.97 1.86 1.39 1.82 1.26 1.55 1.84 2.08 1.72 1.73 1.80
21 1.82 1.40 1.59 1.61 1.61 1.25 1.44 1.65 1.69 2.17 1.54 1.34 1.59
22 1.63 1.25 1.30 1.24 1.43 1.80 1.23 1.45 1.44 1.52 1.27 1.67 1.43
23 1.40 1.21 1.04 1.41 1.69 1.24 1.24 1.32 1.57 1.39 1.20 1.44 1.35
24 1.48 1.01 1.07 1.15 1.52 1.13 1.16 1.12 1.28 1.40 1.13 1.50 1.25
Monthly
Mean 2.62 2.19 1.99 1.99 1.86 2.16 2.20 2.18 2.27 2.09 1.67 2.20
113
Table A18 Monthly basis hourly surface wind speed data at Lepas in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 1.69 1.35 1.30 1.45 0.79 1.03 0.75 1.16 1.40 1.20 1.60 3.49 1.44
2 1.91 1.79 1.40 1.64 0.82 0.85 0.87 0.93 1.44 1.36 1.45 3.52 1.50
3 2.00 2.59 1.60 1.84 0.64 1.07 0.87 0.85 1.16 1.31 1.91 2.88 1.56
4 2.53 2.66 1.83 1.33 0.78 0.75 1.03 0.88 1.36 0.86 1.58 3.00 1.55
5 2.20 2.69 1.64 1.28 0.79 0.71 0.94 1.26 1.00 1.15 1.39 3.25 1.52
6 2.43 2.78 1.50 1.39 1.01 1.01 0.91 0.87 1.12 1.00 1.47 3.31 1.57
7 2.57 2.41 1.64 1.37 0.98 0.69 1.22 0.66 1.26 1.36 1.50 2.89 1.55
8 2.54 2.19 1.61 1.40 0.88 0.85 0.78 1.26 1.60 1.22 1.60 2.71 1.55
9 3.15 3.33 2.41 1.89 1.52 1.79 1.54 1.91 1.86 1.65 2.78 3.91 2.31
10 3.82 4.07 2.56 2.54 2.39 2.24 2.88 2.90 2.43 2.08 3.42 4.81 3.01
11 3.86 4.23 3.24 3.66 3.28 3.51 3.83 3.62 3.53 3.04 4.10 4.94 3.74
12 4.32 4.15 3.83 3.85 3.84 3.89 4.17 4.42 3.65 3.70 3.94 4.84 4.05
13 4.28 4.59 4.55 4.60 4.10 4.20 4.85 4.82 4.64 4.14 3.78 4.82 4.45
14 4.78 4.93 5.42 5.12 4.56 4.80 5.21 5.36 4.65 4.77 3.98 4.93 4.88
15 5.37 5.31 5.55 4.85 4.49 4.54 5.43 5.87 4.64 4.54 4.25 4.71 4.96
16 5.19 5.27 4.82 4.78 4.44 4.83 5.54 5.88 4.22 4.40 4.13 4.53 4.84
17 5.31 5.17 4.56 4.61 3.81 4.02 5.31 5.57 3.76 3.68 3.31 3.80 4.41
18 3.96 4.50 3.69 3.66 3.25 3.61 4.69 4.49 3.16 2.68 2.75 3.87 3.69
19 3.06 3.75 3.18 2.84 2.37 2.54 4.02 3.12 2.28 2.00 2.07 2.63 2.82
20 1.90 2.71 2.23 2.74 1.55 1.58 3.10 1.95 1.63 1.30 1.66 2.12 2.04
21 1.69 1.91 2.04 1.76 1.27 1.01 2.49 1.20 1.36 1.46 1.77 2.76 1.73
22 1.82 1.76 1.82 1.46 1.41 1.41 2.01 1.13 1.30 1.21 1.54 2.96 1.65
23 1.85 1.34 1.70 1.22 1.34 1.10 1.51 0.74 1.23 1.58 1.98 3.17 1.56
24 1.90 2.03 1.21 1.37 0.98 0.82 1.22 0.93 1.29 1.49 1.72 3.75 1.56
Monthly
Mean 3.09 3.23 2.72 2.61 2.14 2.20 2.72 2.57 2.33 2.22 2.49 3.65
114
Table A19 Monthly basis hourly surface wind speed data at Lepas in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 3.72 1.37 1.35 1.54 1.15 0.90 1.22 1.13 0.82 1.22 1.70 2.00 1.51
2 3.39 1.44 1.52 1.23 1.17 0.85 1.04 1.35 0.96 1.02 1.93 2.36 1.52
3 3.80 1.39 1.02 1.24 1.23 0.70 1.30 1.28 1.17 0.90 1.54 2.69 1.52
4 3.87 1.56 1.78 1.18 1.34 0.99 1.62 1.30 1.14 1.25 1.59 2.85 1.71
5 4.13 1.75 1.77 0.91 1.34 1.01 1.32 1.44 1.28 1.27 1.68 2.77 1.72
6 4.07 1.94 1.33 0.94 0.79 0.97 1.50 1.75 1.10 1.35 2.01 3.20 1.74
7 3.86 1.79 1.15 1.61 1.39 1.01 1.49 1.37 1.30 1.21 1.78 3.03 1.75
8 3.96 1.80 1.26 1.23 1.30 1.20 1.43 1.35 1.26 1.30 1.81 3.30 1.77
9 5.10 2.03 1.22 1.91 1.65 1.43 1.56 2.21 1.34 2.22 2.55 3.25 2.21
10 5.03 3.38 2.21 2.90 2.42 2.09 2.10 2.51 2.64 3.12 3.38 4.32 3.01
11 5.44 3.75 3.30 3.41 3.10 3.23 3.29 3.01 2.91 2.97 4.00 4.53 3.58
12 5.85 3.78 3.79 3.22 3.56 3.31 3.78 3.52 3.68 3.68 3.79 3.98 3.83
13 6.03 4.80 4.71 4.42 3.54 4.52 4.81 3.88 4.23 4.05 4.39 4.32 4.47
14 6.02 5.66 5.04 4.70 4.07 4.93 4.89 4.40 4.74 4.39 4.89 4.83 4.88
15 5.69 6.05 5.56 5.08 4.41 4.94 5.07 4.31 4.85 4.03 4.74 5.22 5.00
16 5.13 5.91 5.01 4.58 3.82 4.74 5.23 4.44 4.37 3.86 4.24 5.04 4.70
17 5.08 5.01 4.34 4.06 3.45 4.35 5.17 3.98 3.93 3.08 3.92 4.43 4.23
18 4.43 4.14 3.95 3.46 3.08 3.61 4.67 3.35 3.03 2.53 3.38 3.37 3.58
19 3.00 3.42 2.64 2.78 2.34 2.62 3.39 2.39 2.32 2.05 2.74 2.76 2.70
20 2.35 2.39 1.83 2.21 1.39 1.54 2.43 1.50 1.93 1.81 2.53 2.05 2.00
21 2.89 1.64 2.42 1.40 1.08 1.18 1.46 1.93 1.70 1.11 2.22 2.04 1.76
22 2.57 1.25 1.90 1.24 1.02 0.78 1.38 1.33 1.20 1.49 2.08 2.03 1.52
23 2.85 1.12 1.86 1.32 0.78 0.86 1.35 1.34 0.87 1.22 1.89 2.16 1.47
24 3.20 1.52 1.22 1.16 0.86 0.89 1.12 1.16 0.90 1.16 1.66 2.25 1.43
Monthly
Mean 4.23 2.87 2.59 2.41 2.09 2.19 2.61 2.34 2.24 2.18 2.77 3.28
115
Table A20 Monthly basis hourly surface wind speed data at Malacca in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 3.22 3.61 2.61 1.48 1.39 1.64 1.21 1.16 1.60 1.46 2.09 3.13 2.05
2 3.14 3.55 2.68 1.33 1.44 1.02 1.18 1.22 1.80 1.28 2.04 3.25 2.00
3 3.09 3.19 2.44 1.36 1.35 1.59 1.00 1.35 1.53 1.27 1.78 3.28 1.94
4 3.24 3.37 2.06 1.35 1.22 1.24 1.19 1.01 1.40 1.55 1.77 3.13 1.88
5 2.87 3.19 2.16 1.33 1.33 1.32 1.37 1.08 1.24 1.38 2.02 2.88 1.85
6 2.56 3.03 2.05 1.04 1.14 1.08 1.18 0.96 1.41 1.37 1.64 2.91 1.70
7 2.53 3.42 1.85 1.04 1.24 1.37 1.13 1.04 1.45 1.17 1.34 2.41 1.67
8 2.57 3.33 2.13 1.22 1.21 1.26 1.39 1.43 1.37 1.32 1.68 2.69 1.80
9 3.63 4.12 3.14 1.63 1.73 1.55 1.72 1.70 2.00 2.13 2.13 4.04 2.46
10 4.69 4.87 4.19 2.38 2.48 2.02 2.21 2.39 2.89 2.58 2.78 4.54 3.17
11 5.06 5.49 3.89 2.91 3.30 2.76 3.27 3.17 3.95 3.13 3.28 5.08 3.77
12 5.25 5.59 4.37 2.84 3.52 3.53 3.88 4.26 4.66 3.63 3.50 5.44 4.21
13 4.93 5.36 4.26 3.75 4.17 4.03 3.91 4.31 4.70 4.62 3.77 5.32 4.43
14 4.36 5.53 4.03 3.88 4.34 4.23 3.78 4.36 4.93 4.99 4.11 5.25 4.48
15 4.96 5.40 4.29 3.92 4.14 3.90 3.73 4.51 5.13 5.39 4.80 5.33 4.62
16 4.34 4.91 4.02 3.94 3.93 3.54 3.66 3.95 4.85 4.88 4.34 4.95 4.28
17 4.07 5.00 3.64 3.52 3.42 3.34 3.13 3.58 4.14 4.31 4.25 4.73 3.93
18 4.32 4.16 2.83 2.81 2.94 2.82 2.83 2.95 3.30 3.14 3.67 4.07 3.32
19 3.11 2.92 2.45 2.08 2.07 1.99 2.12 1.86 2.57 2.36 2.69 3.83 2.50
20 2.22 2.28 1.71 1.74 1.21 1.25 1.55 1.40 1.83 1.88 2.21 3.06 1.86
21 2.46 2.43 1.86 1.39 0.86 0.88 1.09 1.01 1.43 1.63 1.97 3.00 1.67
22 2.38 2.46 2.14 1.57 1.04 0.97 1.17 1.20 1.46 1.41 2.08 3.07 1.75
23 2.37 3.16 2.05 1.47 1.13 1.04 0.94 1.56 1.47 1.22 2.20 3.24 1.82
24 2.80 3.41 2.20 1.41 1.05 1.06 1.10 1.22 1.27 1.61 1.99 3.24 1.86
Monthly
Mean 3.51 3.91 2.88 2.14 2.15 2.06 2.07 2.20 2.60 2.49 2.67 3.83
116
Table A21 Monthly basis hourly surface wind speed data at Malacca in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 4.76 3.27 2.16 2.05 2.23 1.34 1.84 1.72 1.07 1.62 1.42 3.46 2.25
2 5.00 3.43 2.34 2.02 2.41 1.21 1.74 1.62 1.29 1.83 1.33 3.46 2.31
3 5.04 3.37 1.97 1.79 2.52 0.82 1.90 1.53 1.50 1.33 1.36 3.35 2.21
4 4.88 3.38 2.15 1.86 2.28 1.27 2.08 1.16 1.33 1.68 1.43 3.23 2.23
5 4.82 3.50 1.61 1.70 2.42 1.20 1.86 1.13 1.15 1.75 1.38 2.91 2.12
6 4.88 3.27 1.36 1.96 1.86 1.23 1.46 1.30 1.31 1.18 1.63 2.74 2.01
7 4.40 3.50 1.63 1.56 1.72 1.14 1.61 1.26 0.87 1.12 1.24 2.78 1.90
8 4.72 3.39 1.71 1.74 1.92 1.31 1.37 1.31 0.63 1.14 1.31 2.95 1.96
9 5.45 4.00 2.26 2.53 2.47 1.90 1.62 1.85 1.39 2.20 2.26 4.05 2.66
10 6.53 5.14 2.80 3.08 2.63 2.88 2.21 2.62 2.30 2.69 3.02 5.36 3.44
11 7.70 5.47 3.03 3.92 3.38 3.00 3.34 3.69 3.31 3.43 3.66 5.91 4.15
12 7.66 5.10 3.28 4.10 3.68 3.51 4.32 3.98 3.95 3.82 4.02 6.23 4.47
13 7.34 4.94 3.84 4.60 4.20 3.98 4.74 4.15 4.20 4.19 4.42 5.93 4.71
14 6.73 4.89 4.34 4.43 4.60 3.85 4.53 4.48 4.19 4.11 4.42 5.68 4.69
15 6.29 5.21 4.38 4.50 4.59 4.00 3.99 4.34 3.94 4.12 4.13 5.59 4.59
16 6.19 5.24 4.51 4.11 4.69 3.54 3.71 4.21 3.66 4.02 4.21 4.95 4.42
17 5.94 4.73 4.36 4.19 4.32 3.27 3.43 3.78 3.07 3.47 3.82 5.08 4.12
18 5.25 4.54 3.70 3.60 3.65 2.78 3.03 3.36 2.80 2.84 3.55 4.71 3.65
19 4.43 3.65 2.84 2.91 2.69 2.13 2.82 2.99 2.16 1.96 2.40 3.86 2.90
20 3.75 2.51 2.44 2.50 2.54 1.58 1.81 2.26 1.43 1.52 1.89 3.56 2.32
21 4.03 2.10 2.21 2.34 2.27 1.22 1.74 1.61 1.02 1.93 2.05 3.45 2.17
22 4.76 2.77 2.35 2.10 2.34 1.33 1.63 1.58 1.07 1.66 1.89 3.67 2.26
23 4.56 2.85 1.80 2.04 2.21 0.97 1.78 1.52 0.97 1.16 1.67 3.69 2.10
24 4.61 3.06 2.11 1.91 2.34 1.30 1.56 1.65 0.86 1.51 1.83 3.49 2.19
Monthly
Mean 5.40 3.89 2.72 2.81 2.92 2.12 2.51 2.46 2.06 2.35 2.51 4.17
117
Table A22 Monthly basis hourly surface wind speed data at Mersing in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 5.12 5.75 4.62 2.68 2.98 3.05 3.10 2.95 2.99 2.83 2.95 4.33 3.61
2 5.18 5.36 4.30 3.20 3.21 3.31 3.18 2.93 3.09 2.89 3.05 4.87 3.71
3 4.95 5.44 4.34 3.28 3.28 3.20 3.34 3.08 3.05 2.91 2.91 4.85 3.72
4 5.37 5.38 4.09 3.31 3.35 3.35 3.05 3.26 3.04 3.00 2.79 4.76 3.73
5 5.56 5.23 4.26 2.97 3.34 3.00 3.04 3.26 2.96 2.90 3.03 4.56 3.67
6 5.38 5.53 3.87 3.15 3.45 3.21 2.90 3.32 3.07 2.83 3.00 4.73 3.70
7 4.82 5.70 3.71 3.25 3.24 3.46 2.85 3.36 2.79 2.98 2.96 4.65 3.65
8 4.57 5.59 3.62 2.63 2.94 3.07 2.57 3.16 2.76 2.60 2.66 4.52 3.39
9 4.51 5.70 3.52 2.18 2.22 2.65 2.60 3.06 2.62 2.13 2.39 4.28 3.15
10 5.25 5.80 4.12 2.08 2.56 2.39 2.80 2.91 3.05 2.32 2.57 5.04 3.41
11 5.63 6.06 4.26 2.56 3.44 3.19 3.30 3.97 3.73 2.39 3.00 5.30 3.90
12 5.75 6.07 4.83 3.78 3.96 3.53 4.13 3.90 3.64 3.43 3.56 5.72 4.36
13 6.19 6.88 5.56 4.35 4.81 4.17 4.72 4.79 4.29 3.67 3.98 6.00 4.95
14 6.05 7.10 6.03 4.56 5.48 4.86 5.60 5.87 4.30 3.99 4.39 5.95 5.35
15 6.65 7.03 6.01 5.16 5.66 5.66 5.26 5.79 4.65 4.41 4.29 6.05 5.55
16 6.46 6.77 6.06 4.72 5.62 5.81 5.51 5.75 4.69 4.08 3.84 5.81 5.43
17 6.27 6.31 6.14 3.96 4.89 4.39 5.42 5.42 4.49 4.31 3.73 5.91 5.10
18 5.97 5.87 5.53 3.55 4.01 3.22 4.98 4.08 3.57 3.82 3.69 5.61 4.49
19 5.97 5.52 5.17 2.72 3.42 2.84 3.98 3.73 3.26 3.04 2.98 5.09 3.98
20 5.84 5.43 4.97 2.86 3.55 3.04 3.05 3.37 2.99 2.95 2.89 5.37 3.86
21 5.48 5.21 4.58 2.88 2.85 3.14 3.02 3.05 3.11 2.82 2.87 5.21 3.68
22 5.32 5.39 4.63 2.42 2.94 3.22 2.82 2.96 2.97 2.74 2.76 5.19 3.61
23 5.70 5.62 4.66 3.00 2.87 3.16 3.06 2.94 3.12 2.90 2.99 4.92 3.75
24 5.25 5.44 4.33 3.17 3.12 3.18 3.12 3.09 3.18 2.85 3.02 4.64 3.70
Monthly
Mean 5.55 5.84 4.72 3.27 3.63 3.50 3.64 3.75 3.39 3.12 3.18 5.14
118
Table A23 Monthly basis hourly surface wind speed data at Mersing in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 6.61 4.08 3.01 3.29 3.04 3.34 3.09 3.10 2.83 2.65 3.63 4.92 3.63
2 6.34 4.29 3.00 2.78 3.03 3.02 3.15 3.06 2.93 3.15 3.71 4.82 3.60
3 6.36 4.32 2.90 3.00 3.09 2.95 3.40 3.09 3.09 2.89 3.50 4.69 3.61
4 6.21 4.31 2.96 2.59 3.24 3.11 3.16 3.29 3.14 2.78 3.57 4.18 3.54
5 6.08 4.30 3.17 2.83 3.08 3.13 3.10 3.32 3.00 2.85 3.55 4.43 3.57
6 6.06 4.17 2.96 2.87 3.04 3.33 3.21 3.47 3.24 3.03 3.67 4.41 3.62
7 5.89 3.79 3.24 2.97 2.92 3.03 3.11 3.45 3.22 3.11 3.69 4.25 3.56
8 5.78 3.82 2.82 2.54 2.82 2.91 3.28 3.06 2.80 2.56 2.85 4.32 3.30
9 5.78 3.97 2.17 1.98 2.18 2.40 2.88 2.69 2.54 2.22 2.94 4.23 3.00
10 6.28 4.62 2.48 2.55 2.69 2.68 2.90 3.08 3.00 2.30 2.97 4.69 3.35
11 6.64 4.87 3.00 3.21 3.43 3.43 3.73 3.74 3.66 2.73 3.55 4.97 3.91
12 7.03 5.27 3.53 4.32 4.09 4.38 4.16 4.37 3.89 3.47 4.28 5.25 4.50
13 7.12 5.94 3.97 4.67 4.34 4.83 5.04 4.73 4.70 4.37 4.26 5.30 4.94
14 7.39 5.95 4.19 4.97 4.63 5.69 5.24 5.31 5.40 4.64 4.63 5.53 5.30
15 7.50 6.44 4.75 4.66 5.07 5.56 5.95 6.35 6.38 5.27 4.59 5.50 5.67
16 7.10 6.01 4.73 4.78 4.96 5.37 5.85 5.99 5.48 4.70 5.00 5.70 5.47
17 7.10 5.88 4.29 4.54 4.30 5.20 4.97 5.12 4.20 4.52 4.33 5.40 4.99
18 7.10 5.55 4.03 4.42 3.60 4.02 4.09 4.21 3.50 3.71 4.01 5.20 4.45
19 6.68 5.06 3.85 3.54 3.14 3.51 3.55 3.38 3.16 3.49 3.85 4.94 4.01
20 6.73 5.04 3.34 3.28 2.66 2.99 2.91 3.09 2.69 3.04 3.66 5.04 3.71
21 6.76 4.84 3.07 3.20 2.67 2.91 2.95 3.03 3.03 3.01 3.92 4.71 3.68
22 6.99 4.61 2.93 3.26 2.78 3.07 2.87 2.91 3.20 2.92 3.76 4.80 3.67
23 6.72 4.49 2.87 3.12 2.87 3.16 3.03 2.75 2.86 3.00 3.44 4.79 3.59
24 6.57 4.36 2.85 3.12 2.81 3.26 3.05 2.82 2.97 2.93 3.52 4.89 3.60
Monthly
Mean 6.62 4.83 3.34 3.44 3.35 3.64 3.69 3.73 3.54 3.31 3.79 4.87 4.01
119
Table A24 Monthly basis hourly surface wind speed data at Senai in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 1.33 1.22 0.9 0.63 0.48 0.52 0.56 0.97 0.51 0.8 1.15 1.57 0.89
2 1.3 1.02 0.92 0.7 0.36 0.36 0.73 0.64 0.9 0.86 0.94 1.65 0.87
3 1.52 1.1 0.86 0.71 0.63 0.61 0.62 0.62 0.75 0.71 1 1.56 0.89
4 1.6 1.1 0.84 0.84 0.68 0.62 0.63 0.75 0.72 0.71 0.78 1.76 0.92
5 1.51 1.41 0.95 0.71 0.61 0.66 0.59 0.52 0.5 0.77 1.11 1.88 0.93
6 1.39 1.33 0.66 0.8 0.6 0.74 0.33 0.47 0.83 1.04 1.22 1.68 0.92
7 1.44 1.28 0.7 0.67 0.75 0.68 0.67 0.63 1.07 0.8 1.02 1.45 0.93
8 1.56 1.26 0.8 0.86 0.84 0.51 0.68 0.58 0.92 0.95 1.43 1.73 1.01
9 2.68 2.17 1.41 1.37 1.05 0.79 0.95 0.9 1.83 1.45 2.06 2.96 1.63
10 4.17 3.65 2.59 1.99 2.97 1.96 2.33 2.3 2.81 2.13 2.37 4.37 2.8
11 4.57 5.08 3.31 2.41 3.34 2.81 3.24 3.17 3.39 2.38 3.05 5.01 3.48
12 4.91 5.13 3.3 2.78 3.58 3.16 3.56 3.66 3.61 2.34 3.2 5.51 3.73
13 4.88 5.15 3.97 2.66 3.58 3.12 3.52 3.74 4.12 2.97 3.39 5.35 3.87
14 5.07 5.77 4.37 3.23 4 3.46 3.89 4.17 4.3 3.54 3.34 5.26 4.2
15 5.25 5.49 4.26 4.27 4.23 3.76 4.03 4 4.5 3.63 3.37 5.21 4.33
16 5.25 5.38 4.52 3.58 3.83 3.75 3.67 4.11 4.2 3.25 3.42 5 4.16
17 4.65 5.69 3.97 2.99 3.2 3.49 3.27 3.36 3.55 2.51 2.91 4.48 3.67
18 4.1 4.67 3.15 2.42 2.58 3.01 2.87 2.62 3.33 1.89 2.72 3.92 3.11
19 3.36 3.76 2.87 1.99 2.02 2.15 2.08 2.39 2.4 1.53 2.12 3.08 2.48
20 2.39 2.74 2.3 1.4 1.1 1.74 1.85 1.72 1.57 1.15 1.31 2.72 1.83
21 1.7 1.99 1.72 1.43 0.78 0.95 1.3 1.54 1 1.03 1.08 2.61 1.43
22 1.79 1.64 1.59 0.85 0.78 0.87 0.91 0.78 0.82 0.88 0.82 2.04 1.15
23 1.65 1.32 1.08 0.88 0.87 0.69 0.57 0.78 0.63 0.69 0.88 1.71 0.98
24 1.52 1.28 0.94 0.74 0.56 0.68 0.63 0.94 0.68 0.75 0.87 1.61 0.93
Monthly
Mean 2.9 2.94 2.17 1.71 1.81 1.71 1.81 1.89 2.04 1.62 1.9 3.09
120
Table A25 Monthly basis hourly surface wind speed data at Senai in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 1.73 0.89 0.88 1.13 0.45 0.61 0.52 0.79 0.88 0.85 1.38 1.44 0.96
2 1.66 0.93 0.82 0.97 0.44 0.57 0.39 0.61 0.95 1.04 1.36 1.21 0.91
3 1.43 0.82 0.96 0.86 0.73 0.73 0.52 0.9 1.08 0.93 1.71 1.22 0.99
4 1.36 0.7 0.86 0.9 0.91 0.64 0.64 0.97 1.04 0.84 1.45 1.16 0.96
5 1.25 0.61 0.94 0.89 0.97 0.65 0.69 1.09 0.85 0.88 1.43 1.11 0.95
6 1.31 0.85 0.87 0.7 1.22 0.78 0.88 0.99 0.85 1.04 1.48 1.31 1.03
7 1.38 0.77 1.04 0.79 0.9 0.5 1.05 0.68 1.06 0.99 1.39 1.15 0.98
8 1.09 0.65 0.95 0.88 1.11 0.69 0.78 1.01 1.4 1.17 1.74 1.38 1.07
9 2.77 1.53 1.58 1.54 1.39 0.87 1.12 1.22 1.46 1.79 2.4 2.46 1.68
10 5.2 3.52 2.39 2.42 2.3 1.95 1.96 1.78 2.61 2.29 3.15 4.09 2.81
11 6.16 4.93 2.58 3.19 2.69 2.84 3.03 3.08 3.1 2.61 3.72 4.72 3.55
12 6.52 5.03 2.96 3.55 3 3.2 3.92 3.3 3.82 3.32 3.95 4.95 3.96
13 6.63 4.67 3 3.71 3.07 3.85 4.72 3.65 4.12 3.43 4.19 4.63 4.14
14 6.76 4.94 3.01 3.48 3.22 4.29 4.51 3.87 4.36 3.94 4.1 4.98 4.29
15 6.66 4.84 3.47 4.12 3.43 3.82 4.34 3.9 4.6 3.96 4.2 5.34 4.39
16 6.96 5.07 3.82 4.04 3.43 3.46 4.23 3.85 3.89 3.6 4.11 5.06 4.29
17 6.51 4.86 3.64 3.49 3.17 2.97 3.9 3.52 3.57 2.98 3.59 5.03 3.94
18 5.83 4.12 2.91 3 3.02 2.79 3.34 2.82 3.35 2.66 2.89 3.8 3.38
19 4.63 3.12 2.39 2.17 2.59 2.19 2.56 2.35 2.52 2.15 2.1 3.04 2.65
20 3.86 2.7 1.71 1.49 1.56 1.5 1.71 1.79 1.51 1.37 2.03 2.2 1.95
21 2.75 2.28 1.22 1.39 1.24 1.27 1.29 1.39 1.26 1.02 1.6 1.89 1.55
22 2.57 1.81 1.16 0.9 1.14 0.85 0.78 0.92 0.98 1.02 1.71 1.63 1.29
23 2.12 1.41 0.95 1.11 0.84 0.56 0.61 0.83 0.77 0.98 1.81 1.26 1.1
24 2.06 1.16 0.74 1.07 0.64 0.56 0.69 0.95 0.72 0.98 1.42 1.26 1.02
Monthly
Mean 3.79 2.65 1.92 2.03 1.86 1.81 2.07 1.97 2.18 1.95 2.5 2.83
121
Table A26 Monthly basis hourly surface wind speed data at Sitiawan in 2008
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 0.89 0.6 0.65 0.71 0.22 0.56 0.43 0.44 0.66 1.02 0.21 0.82 0.6
2 0.69 0.51 0.67 0.61 0.41 0.24 0.51 0.44 0.45 0.91 0.11 0.69 0.52
3 0.56 0.54 0.71 0.62 0.43 0.28 0.62 0.4 0.79 0.64 0.14 0.53 0.52
4 0.56 0.64 0.8 0.79 0.43 0.48 0.33 0.44 0.8 0.95 0.4 0.51 0.59
5 0.5 0.6 0.55 0.77 0.42 0.52 0.43 0.35 0.73 0.78 0.53 0.24 0.54
6 0.49 0.58 0.6 0.61 0.56 0.38 0.59 0.52 0.63 0.89 0.58 0.4 0.57
7 0.46 0.72 0.65 0.84 0.54 0.35 0.51 0.49 0.6 0.5 0.53 0.29 0.54
8 0.51 0.68 0.87 0.95 0.57 0.63 0.65 0.59 0.77 0.73 0.34 0.42 0.64
9 1.42 1.52 1.29 1.62 1.56 1.33 1.31 1.29 1.47 1.39 1.46 1.19 1.4
10 1.53 1.93 1.71 1.96 1.65 1.69 1.87 1.77 1.8 1.79 1.69 1.54 1.74
11 1.63 2.22 1.81 1.99 2.09 2.06 2.48 2.34 2.37 1.89 1.86 1.67 2.04
12 1.89 2.14 2.03 2.27 2.31 2.37 2.49 2.69 2.92 2.49 2.15 1.98 2.31
13 2.29 2.62 2.73 2.77 2.75 2.82 2.95 3.15 3.33 3.04 2.61 2.48 2.79
14 2.91 3.03 3.49 3.46 3.04 3.18 3.27 3.64 3.59 3.58 3 3.09 3.27
15 3.54 4.07 3.95 4.41 3.48 3.26 3.62 4.1 4.01 4.13 4.09 3.48 3.84
16 3.91 4.23 4.58 4.14 3.59 3.48 3.84 4.15 3.9 4.26 4.11 4 4.02
17 4.06 4.28 3.93 3.61 3.4 2.93 3.57 3.69 3.37 3.7 3.78 3.68 3.67
18 3.49 4.09 3.34 2.66 2.71 2.7 2.91 2.89 2.72 3.26 2.93 3.04 3.06
19 2.71 3.16 2.43 1.83 1.89 2.04 1.88 2.13 1.9 2.18 1.95 2.12 2.19
20 1.54 1.85 1.65 1.3 1.26 1.38 1.19 1.1 1.36 1.31 1.14 1.43 1.38
21 1.11 1.31 1.24 1.14 0.7 0.83 0.63 0.6 0.96 1.12 0.81 0.89 0.94
22 0.77 0.76 1.09 0.97 0.61 0.64 0.67 0.65 0.65 0.93 0.53 0.55 0.73
23 0.93 0.7 0.9 0.79 0.56 0.53 0.64 0.45 0.75 0.64 0.31 0.87 0.67
24 0.95 0.9 0.99 0.8 0.42 0.71 0.53 0.45 0.53 0.96 0.23 0.83 0.69
Monthly
Mean 1.64 1.82 1.78 1.73 1.48 1.47 1.58 1.61 1.71 1.8 1.48 1.53
122
Table A27 Monthly basis hourly surface wind speed data at Sitiawan in 2009
Month
Hour
J
a
n
F
e
b
M
a
r
A
p
r
M
a
y
J
u
n
J
u
l
A
u
g
S
e
p
O
c
t
N
o
v
D
e
c
Hourly
Mean
1 0.58 0.51 0.8 0.64 0.43 0.28 0.37 0.61 0.49 0.51 0.28 0.31 0.48
2 0.6 0.39 0.54 0.79 0.45 0.49 0.16 0.69 0.56 0.47 0.32 0.43 0.49
3 0.35 0.28 0.43 0.25 0.69 0.37 0.49 0.43 0.35 0.59 0.42 0.5 0.43
4 0.5 0.55 0.51 0.44 0.54 0.44 0.81 0.36 0.56 0.56 0.38 0.44 0.51
5 0.54 0.35 0.68 0.52 0.52 0.54 0.74 0.39 0.57 0.72 0.26 0.35 0.52
6 0.37 0.65 0.48 0.44 0.65 0.38 1.09 0.37 0.72 0.87 0.4 0.44 0.57
7 0.3 0.4 0.44 0.41 0.53 0.53 0.66 0.55 0.63 0.87 0.31 0.51 0.51
8 0.45 0.48 0.51 0.52 0.65 0.43 0.71 0.76 0.63 1.06 0.72 0.39 0.61
9 1.39 1.21 1.21 1.44 1.23 1.24 1.3 1.05 1.29 1.65 0.91 1.28 1.27
10 1.67 1.73 1.42 1.74 1.79 1.93 1.93 1.55 1.72 1.86 1.37 1.68 1.7
11 1.89 2.01 1.71 2.52 1.94 2.07 2.38 2.26 2.12 1.95 1.39 1.8 2
12 1.79 2.14 1.8 2.65 2.23 2.33 2.61 2.66 2.08 2.1 1.6 1.71 2.14
13 1.85 2.5 1.97 3.09 2.6 2.66 2.72 3.03 2.16 2.63 2.32 2.23 2.48
14 2.49 3.28 2.61 3.78 3.17 3.16 3.02 3.72 2.85 3.48 3.15 2.65 3.11
15 3.18 4.31 3.51 4.4 4.08 3.69 3.23 4.43 3.27 3.92 3.97 3.27 3.77
16 3.67 4.68 3.91 4.62 4.43 4.4 3.56 4.8 3.51 3.91 3.73 3.55 4.06
17 3.91 4.49 4.01 3.79 4.13 4.05 3.28 4.01 3.65 3.56 2.91 3.22 3.75
18 3.3 3.9 3.44 3.14 3.3 3.68 2.82 3.29 2.79 2.73 2.06 2.78 3.1
19 2.59 2.87 2.5 2.51 2.6 2.76 1.74 2.15 1.96 1.83 1.29 2.12 2.24
20 1.4 1.93 1.51 1.73 1.56 1.52 0.85 1.56 1.19 1.43 0.93 1.13 1.4
21 1.03 1.08 1.34 1.14 1.17 0.85 0.66 1.2 1.2 0.94 0.97 0.58 1.01
22 0.78 1 0.8 0.76 0.82 0.71 0.44 0.87 0.58 0.68 0.84 0.7 0.75
23 0.65 0.78 0.83 0.73 0.36 0.63 0.41 0.8 0.67 0.56 0.49 0.58 0.62
24 0.81 0.7 0.58 0.71 0.34 0.41 0.43 0.52 0.59 0.65 0.43 0.46 0.55
Monthly
Mean 1.5 1.76 1.56 1.78 1.68 1.65 1.52 1.75 1.51 1.65 1.31 1.38
123
Appendix B Predicted contour mapping on mean wind speed
Figure B1 Contour Map on predicted monthly mean wind speed (m/s) for February
124
Figure B2 Contour Map on predicted monthly mean wind speed (m/s) for March
125
Figure B3 Contour Map on predicted monthly mean wind speed (m/s) for April
126
Figure B4 Contour Map on predicted monthly mean wind speed (m/s) for May
127
Figure B5 Contour Map on predicted monthly mean wind speed (m/s) for June
128
Figure B6 Contour Map on predicted monthly mean wind speed (m/s) for July
129
Figure B7 Contour Map on predicted monthly mean wind speed (m/s) for August
130
Figure B8 Contour Map on predicted monthly mean wind speed (m/s) for September
131
Figure B9 Contour Map on predicted monthly mean wind speed (m/s) for October
132
Figure B10 Contour Map on predicted monthly mean wind speed (m/s) for November
133
Appendix C Relevant publications
Journal Articles
1. M.R. Islam, R. Saidur and N.A. Rahim (2010). Assessment of Wind Energy
Potentiality At Kudat And Labuan, Malaysia: Using Weibull Distribution
Function. Energy, 36(2), 985-992.
2. R. Saidur, M.R. Islam, N.A. Rahim and K.H. Solangi (2010). A Review on
Global Wind Energy Policy. Renewable and Sustainable Energy Reviews, 14(7),
1744-62.
3. R. Saidur, N.A. Rahim, M.R. Islam and K.H. Solangi, and (2010).
Environmental Impact of Wind Energy. Renewable and Sustainable Energy
Reviews, 15(5), 2423-2430.
4. M.R. Islam, R. Saidur and N.A. Rahim (2010). Assessing Wind Energy
Potentiality for Selected Stations in Malaysia. Energy Education Science and
Technology Part A: Energy Science and Research. (Under review)
Conference Papers
1. M.R. Islam, R. Saidur, N. A. Rahim and K. H. Solangi. Assessment and
analysis of wind energy potential at mersing, Malaysia, 3rd international
conference on science & technology (ICSTIE), Penang, Malaysia, 16-17
December, 2010, Paper No. 13.
134
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